OECD Factbook 2015: Economic, Environmental and Social Statistics [Annual ed.] 9264232567, 9789264232563

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OECD Factbook ECONOMIC, ENVIRONMENTAL AND SOCIAL STATISTICS

2015-2016

trade

health

resources

education energy labour production science migration technology globalisation income finance population

investment

society

environment

prices

income

productivity

conversion regions

expenditure

labour government

revenue

tax

public transport

OECD Factbook 2015-2016 ECONOMIC, ENVIRONMENTAL AND SOCIAL STATISTICS

This work is published on the responsibility of the Secretary-General of the OECD. The opinions expressed and arguments employed herein do not necessarily reflect the official views of the Organisation or of the governments of its member countries. This document and any map included herein are without prejudice to the status of or sovereignty over any territory, to the delimitation of international frontiers and boundaries and to the name of any territory, city or area.

Please cite this publication as: OECD (2016), OECD Factbook 2015-2016: Economic, Environmental and Social Statistics, OECD Publishing, Paris. http://dx.doi.org/10.1787/factbook-2015-en

ISBN 978-92-64-23256-3 (print) ISBN 978-92-64-25111-3 (PDF) ISBN 978-92-64-25524-1 (HTML)

Annual: ISSN 1995-3879 (print) ISSN 1814-7364 (online)

The statistical data for Israel are supplied by and under the responsibility of the relevant Israeli authorities. The use of such data by the OECD is without prejudice to the status of the Golan Heights, East Jerusalem and Israeli settlements in the West Bank under the terms of international law.

Photo credits: Chapter 2: © Image Source/Getty Images | Chapter 3: © Istockphoto/Dan Barnes | Chapter 4: © Stockbyte/Getty Images | Chapter 5: © Lawrence Lawry/Photodisc/Getty Images | Chapter 6: © Larry Lee Photography/Corbis | Chapter 7: © Cocoon/Digital Vision/Getty Images | Chapter 8: © Comstock Images/Comstock Images/Getty Images | Chapter 9: © Digital Vision/Getty Images | Chapter 10: © Jacobs Stock Photography/Getty Images | Chapter 11: © OCDE. Corrigenda to OECD publications may be found on line at: www.oecd.org/publishing/corrigenda.

© OECD 2016 You can copy, download or print OECD content for your own use, and you can include excerpts from OECD publications, databases and multimedia products in your own documents, presentations, blogs, websites and teaching materials, provided that suitable acknowledgement of OECD as source and copyright owner is given. All requests for public or commercial use and translation rights should be submitted to [email protected]. Requests for permission to photocopy portions of this material for public or commercial use shall be addressed directly to the Copyright Clearance Center (CCC) at [email protected] or the Centre français d’exploitation du droit de copie (CFC) at [email protected].

OECD Factbook 2015-2016

FOREWORD For over 10 years now, the OECD Factbook has been one of the most comprehensive OECD publications on statistics. The 2015-2016 edition continues this tradition. The OECD Factbook now contains close to 100 internationally comparable indicators, allowing users to assess and compare the performance of countries over time in a wide range of topics that match the interests of policy-makers and citizens alike. To give just a few examples, the 2015-2016 OECD Factbook shows that: CO2 emissions from fuel combustion in the OECD as whole during 2014 were below the levels seen between 2003 and 2008; that the contribution of renewables to the energy supply remains just under 10% on average in the OECD; that expenditure on health has risen steadily, accounting for more than 9% of GDP on average; and, that the elderly population as a percentage of the total population continues to increase in most OECD countries, with an average ratio of 16% across the OECD in 2014. This latest edition of the Factbook also includes new indicators in the fields of education on the connection between students, computers and learning, as well as early childhood education and care, and for regional statistics on GDP by metropolitan area. Written in a non-technical language, the OECD Factbook provides data and indicators for all 34 OECD member countries and, when available and considered internationally comparable, for Brazil, India, Indonesia, the People's Republic of China, Russia and South Africa. As part of an on-going effort to make OECD data more readily available, virtually all the indicators presented in the OECD Factbook 2015-2016 are also available online through OECD.Stat, the OECD platform for data dissemination, and through the new OECD Data portal. I trust that the OECD Factbook, in its various formats, will continue to be a first-stop, easy tool for all those who are looking for reliable, trustworthy and internationally comparable statistics, providing the evidence which ultimately helps to deliver better policies for better lives.

Martine Durand OECD Chief Statistician and Director of Statistics

4

OECD FACTBOOK 2015-2016 © OECD 2016

ACKNOWLEDGEMENTS The OECD Factbook, comprising the paper and e-publications, as well as the online rolling dataset is the result of ongoing statistical co-operation among virtually all OECD directorates, more specifically: the Centre for Tax Policy and Administration; the Directorate for Financial and Enterprise Affairs; the Development Cooperation Directorate; the Directorate for Education and Skills; the Directorate for Employment, Labour and Social Affairs; the Environment Directorate; Public Governance and Territorial Development; the Statistics Directorate; and the Directorate for Science, Technology and Innovation. A number of OECD agencies are also included, namely: the International Energy Agency (IEA), the Nuclear Energy Agency (NEA) and the International Transport Forum (ITF). It also reflects the continuous and effective collaboration with OECD and partner countries’ statistical authorities. The OECD Statistics Directorate is responsible for the overall co-ordination of the OECD Factbook, led by David Brackfield (Editor) and Ingrid Herrbach (technical production). The OECD Public Affairs and Communications Directorate provides editorial guidance, led by Eileen Capponi with Damian Garnys and Margaret Simmons. The Knowledge and Information Services section of the Digital, Knowledge and Information Service in the OECD Executive Directorate provides the IT support.

OECD FACTBOOK 2015-2016 © OECD 2016

5

TABLE OF CONTENTS FOREWORD ACKNOWLEDGEMENTS READER’S GUIDE

4 5 8

Population and Population and Migration migration POPULATION Total population Fertility Population by region Elderly population by region

12 12 14 16 18

INTERNATIONAL MIGRATION Immigrant and foreign population Trends in migration Migration and employment Migration and unemployment

20 20 22 24 26

Production Production PRODUCTION AND PRODUCTIVITY Size of GDP Evolution of GDP GDP by metropolitan area Investment rates Labour productivity levels

30 30 32 34 36 38

ECONOMIC STRUCTURE Value added by activity Real value added by activity Small and medium-sized enterprises

40 40 42 44

Household Household Income income and and Wealth wealth INCOME AND SAVINGS National income per capita Household disposable income Household savings

48 48 50 52

INCOME INEQUALITY AND POVERTY Income inequality Poverty rates and gaps

54 54 56

HOUSEHOLD WEALTH Household financial assets Household debt Non-financial assets of households

58 58 60 62

Globalisation Globalisation TRADE Share of international trade in GDP International merchandise trade International trade in services Trade in value added Trade in value added: role of intermediates and services

66 66 68 70 72

FDI AND BALANCE OF PAYMENTS Foreign direct investment flows Foreign direct investment stocks FDI regulatory restrictiveness index Balance of payments

76 76 78 80 82

Prices Prices PRICES AND INTEREST RATES Inflation (CPI) Producer price indices Long-term interest rates

86 86 88 90

PURCHASING POWER PARITIES AND EXCHANGE RATES Rates of conversion Real effective exchange rates

92 92 94

Energy Transportation Energyand and transportation ENERGY REQUIREMENTS Energy supply Energy intensity Electricity generation Nuclear energy Renewable energy Oil production Oil prices

98 98 100 102 104 106 108 110

TRANSPORT Goods transport Passenger transport Road fatalities

112 112 114 116

Labour Labour EMPLOYMENT AND HOURS WORKED Employment rates Employment rates by age group Part-time employment

6

74

120 120 122 124

OECD FACTBOOK 2015-2016 © OECD 2016

Self-employment Employment by region Hours worked

126 128 130

UNEMPLOYMENT Unemployment rates Long-term unemployment Unemployment by region

132 132 134 136

Environment Environmentand andScience science WATER AND WASTE Abstractions of freshwater Municipal waste

140 140 142

AIR AND CLIMATE Emissions of carbon dioxide Sulphur and nitrogen emissions Greenhouse gas emissions Regional quality of air

144 144 146 148 150

RESEARCH AND DEVELOPMENT Expenditure on R&D Researchers Patents

152 152 154 156

Education Education OUTCOMES International student assessment Students, computers and learning Early childhood education and care Youth inactivity How many students study abroad? Educational attainment

160 160 162 164 166 168 170

RESOURCES Teachers' salaries Educational expenditure Expenditure in tertiary education

172 172 174 176

OECD FACTBOOK 2015-2016 © OECD 2016

Government Government GOVERNMENT DEFICITS AND DEBT Government expenditures, revenues and deficits Government debt

180

GENERAL GOVERNMENT Expenditures across levels of government General government expenditures and revenues per capita General government production costs

184 184

PUBLIC EXPENDITURE Social expenditure Pension expenditure Official development assistance

190 190 192 194

TAXES Taxes on the average worker Total tax revenue

196 196 198

180 182

186 188

Health Health HEALTH STATUS Life expectancy Infant mortality Suicides

202 202 204 206

RISK FACTORS Smoking Alcohol consumption Overweight and obesity

208 208 210 212

RESOURCES Doctors Nurses Health expenditure

214 214 216 218

Analytical index

220

7

READER’S GUIDE Main features ●

Tables and charts are preceded by short texts that explain how the statistics are defined (Definition) and that identify any problems there may be in comparing the performance of one country with another (Comparability). To avoid misunderstandings, the tables and charts must be viewed in conjunction with the texts that accompany them.



Tables and charts can be downloaded as Excel files.



While media comment on statistics usually focuses on the short term – what has happened to employment, prices, GDP and so on in the last few months – the OECD Factbook takes a longer view; the text and charts mostly describe developments during at least the last ten years. This long-term perspective provides a good basis for comparing the successes and failures of policies in raising living standards and improving social conditions in countries.



To facilitate cross-country comparisons, many indicators in the OECD Factbook have been standardised by relating them to each country’s gross domestic product (GDP). In cases where GDP needs to be converted to a common currency, purchasing power parities (PPPs) have been used rather than exchange rates. When PPPs are used, differences in GDP levels across countries reflect only differences in the volume of goods and services, that is, differences in price levels are eliminated.

Conventions Unless otherwise specified: ●

OECD refers to all 34 OECD countries; the indicator is presented either as the weighted average of country values or an unweighted arithmetic average.



For each country, the average value in different periods takes into account only the years for which data are available. The average annual growth rate of an indicator over a period of time is the geometric average of the growth rates of that indicator across the period (that is, the annual compound growth rate).



Each table and chart specifies the period covered. The mention, XXXX or latest available year (where XXXX is a year or a period) means that data for later years are not taken into account..

Signs, abbreviations and acronyms .. 0 USD DAC ILO IMF ITF UN UNECE WTO

8

Missing value, not applicable or not available Less than half of the unit precision level of the observation Absolute zero US dollars OECD Development Assistance Committee International Labour Organization International Monetary Fund International Transport Forum United Nations United Nations Economic Commission for Europe World Trade Organization

OECD FACTBOOK 2015-2016 © OECD 2016

The OECD Factbook uses ISO codes for countries AUS AUT BEL CAN CHL CZE DNK EST FIN FRA GRC DEU HUN ISL IRL ISR ITA

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Greece Germany Hungary Iceland Ireland Israel Italy

JPN KOR LUX MEX NLD NZL NOR POL PRT SVK SVN ESP SWE CHE TUR GBR USA

Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States

DAC EA19 EU28 OECD WLD

DAC total Euro area European Union OECD area World

BRA CHN IND IDN RUS ZAF

Brazil China India Indonesia Russian Federation South Africa

StatLinks This publication includes the OECD StatLink service, which enables users to download Excel versions of tables and figures. StatLinks are provided at the bottom of each table and figure. StatLinks behave like Internet addresses: simply type the StatLink into your Internet browser to obtain the corresponding data in Excel format. For more information about OECD StatLinks, please visit: www.oecd.org/statistics/statlink.

Accessing OECD publications ●

OECD publications cited in the OECD Factbook are available through OECD iLibrary (www.oecd-ilibrary.org).



All the OECD working papers can be downloaded from OECD iLibrary.



All OECD databases mentioned can be accessed through OECD iLibrary.



Print editions of all OECD books can be purchased via the OECD online bookshop (www.oecd.org/bookshop).

OECD FACTBOOK 2015-2016 © OECD 2016

9

POPULATION AND MIGRATION POPULATION TOTAL POPULATION FERTILITY POPULATION BY REGION ELDERLY POPULATION BY REGION

INTERNATIONAL MIGRATION IMMIGRANT AND FOREIGN POPULATION TRENDS IN MIGRATION MIGRATION AND EMPLOYMENT MIGRATION AND UNEMPLOYMENT

POPULATION AND MIGRATION • POPULATION

TOTAL POPULATION Population

The size and growth of a country’s population provides important contextual information to help understand other social and economic outcomes.

Definition Data refer to the resident population, which for most countries is defined as all nationals present in, or temporarily a bsent from the country, and aliens permanently settled in the country. It includes the following categories: national armed forces stationed abroad; merchant seamen at sea; diplomatic personnel located abroad; civilian aliens resident in the country; and displaced persons resident in the country. Excluded are the following categories: foreign armed forces stationed in the country; foreign diplomatic personnel located in the country; and civilian aliens temporarily in the country. For countries with overseas colonies, protectorates or other territorial possessions, their populations are generally excluded. Growth rates are the annual changes resulting from births, deaths and net migration during the year.

Comparability For most OECD countries, population data are based on regular, ten-yearly censuses, with estimates for intercensal years derived from administrative data. In several European countries, population estimates are based entirely on administrative records. Population data are fairly comparable. Some nations are capable of generating population statistics from administrative records or through a combination of data sources. The vast majority of countries, however, produce these data on population and housing by conducting a traditional census, which in principle entails canvassing the entire country, reaching every single household and collecting information on all individuals within a brief stipulated period. For some countries, the population figures shown here differ from those used for calculating GDP and other economic statistics on a per capita basis, although differences are normally small.

Data for total population may be compiled following two basic concepts: "Present-in-area population” or de facto, i.e. persons actually present in the country on the date of the census; or, “Resident population” or de jure, i.e. persons regularly domiciled in the country on the date of the census.

Overview Within the OECD, in 2013, the United States accounted for 25% of the OECD total, followed by Japan (10%), Mexico (9%), Germany and Turkey (6%), France, Italy and the United Kingdom (5%), Korea and Spain (4%), Canada and Poland (3%). In the same year, the population of China was 10% higher than that of the whole OECD while the population of India was equal to that of the whole OECD. In the three years to 2014 (or latest available period), population annual growth rates above 1% were recorded in Chile, Israel, Mexico and Turkey (high birth rate countries) and in Luxembourg, Australia, Canada, Norway, and Switzerland (high net immigration). Over the same period, the highest population annual declines were observed in Portugal (due to a low birth rate and a negative net migration rate) and Hungary (for which birth and net migration rates are low). Growth rates were also negative in Estonia, Greece, Japan and Spain, while the population was stable in Poland. Among emerging economies, in the three years to 2013, population annual growth rates were above 1% in South Africa, Brazil, India and Indonesia. By contrast, Russian population rose more slowly.

12

Sources • For OECD member countries: national sources, United Nations and Eurostat. • For Brazil, China, India, Indonesia, the Russian Federation and South Africa: United Nations, World Population Prospects: The 2012 Revision.

Further information Analytical publications • OECD (2011), Doing Better for Families, OECD Publishing. • OECD (2011), The Future of Families to 2030, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Methodological publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics. • OECD Social and Welfare Statistics, Family indicators. • United Nations World Population Prospects.

Websites • OECD Family Database, www.oecd.org/social/family/ database. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • POPULATION TOTAL POPULATION

Population levels Thousands Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

19 495 8 082 10 333 31 354 15 668 10 201 5 376 1 379 5 201 59 894 82 456 10 983 10 159 288 3 917 6 570 57 474 127 435 47 622 446 100 909 16 149 3 949 4 538 38 232 10 420 5 377 1 996 41 424 8 925 7 285 66 003 58 570 287 625 489 827 1 168 022 175 077 1 295 322 1 076 706 215 038 145 306 45 545

19 721 8 118 10 376 31 640 15 838 10 202 5 391 1 371 5 213 60 304 82 502 11 016 10 130 289 3 980 6 690 57 478 127 619 47 859 450 102 000 16 225 4 027 4 564 38 195 10 459 5 373 1 997 42 196 8 958 7 339 66 795 58 839 290 108 491 624 1 176 212 177 360 1 302 810 1 093 787 218 146 144 649 46 127

19 933 8 169 10 421 31 941 16 002 10 207 5 405 1 363 5 228 60 734 82 491 11 057 10 107 293 4 045 6 809 57 297 127 687 48 039 455 103 002 16 282 4 088 4 592 38 180 10 484 5 372 1 997 42 859 8 994 7 390 67 599 59 149 292 805 493 577 1 184 415 183 439 1 310 414 1 110 626 221 294 144 067 46 727

20 177 8 225 10 479 32 245 16 165 10 234 5 419 1 355 5 246 61 182 82 465 11 093 10 087 296 4 134 6 930 57 716 127 768 48 138 461 107 151 16 320 4 134 4 623 38 161 10 503 5 373 2 001 43 663 9 030 7 437 68 435 59 591 295 517 495 518 1 192 754 185 651 1 318 177 1 127 144 224 481 143 519 47 350

20 451 8 268 10 548 32 576 16 332 10 267 5 437 1 347 5 267 61 597 82 369 11 131 10 071 304 4 233 7 054 57 984 127 770 48 372 469 108 409 16 346 4 185 4 661 38 132 10 522 5 373 2 009 44 361 9 081 7 484 69 295 60 003 298 380 497 369 1 201 155 187 852 1 326 146 1 143 289 227 710 143 050 47 991

20 828 8 295 10 626 32 928 16 505 10 323 5 461 1 341 5 289 61 965 82 257 11 163 10 056 311 4 376 7 180 58 272 127 771 48 598 476 109 787 16 382 4 224 4 709 38 116 10 543 5 375 2 019 45 236 9 148 7 551 70 158 60 482 301 231 499 299 1 210 194 189 954 1 334 344 1 159 095 230 973 142 805 48 658

21 249 8 322 10 710 33 318 16 687 10 430 5 494 1 337 5 313 62 300 82 135 11 186 10 038 319 4 485 7 309 58 740 127 692 48 949 484 111 299 16 446 4 260 4 768 38 116 10 558 5 379 2 023 45 983 9 220 7 648 71 052 60 982 304 094 501 194 1 219 475 192 000 1 342 733 1 174 662 234 244 142 742 49 345

21 692 8 341 10 796 33 727 16 877 10 491 5 523 1 335 5 339 62 615 81 904 11 185 10 023 319 4 533 7 486 59 140 127 510 49 182 494 112 853 16 530 4 303 4 829 38 153 10 568 5 386 2 042 46 368 9 299 7 744 72 039 61 424 306 772 502 630 1 227 932 193 995 1 351 248 1 190 138 237 487 142 785 50 055

22 032 8 361 10 920 34 127 17 066 10 517 5 548 1 331 5 363 62 918 81 715 11 153 10 000 318 4 555 7 624 59 420 128 057 49 410 502 114 256 16 615 4 351 4 889 38 517 10 573 5 391 2 049 46 562 9 378 7 828 73 142 61 915 309 347 503 833 1 236 914 193 253 1 359 822 1 205 625 240 677 142 849 50 792

22 340 8 389 11 048 34 484 17 256 10 497 5 571 1 327 5 388 63 223 80 249 11 124 9 972 319 4 575 7 766 59 660 127 799 49 779 512 115 683 16 693 4 384 4 953 38 526 10 558 5 398 2 052 46 736 9 449 7 912 74 224 62 435 311 722 505 035 1 243 751 197 825 1 368 440 1 221 156 243 802 142 961 51 554

22 728 8 426 11 128 34 880 17 445 10 509 5 592 1 323 5 414 63 514 80 413 11 090 9 920 321 4 585 7 911 59 898 127 515 50 004 525 117 054 16 755 4 408 5 019 38 534 10 515 5 408 2 056 46 766 9 519 7 997 75 176 62 859 314 112 506 100 1 250 277 199 689 1 377 065 1 236 687 246 864 143 207 52 341

23 126 8 469 11 178 35 154 17 632 10 511 5 615 1 318 5 439 63 786 80 611 .. 9 893 324 4 593 8 059 60 225 127 298 50 220 537 118 395 16 804 4 442 5 080 38 502 10 457 5 416 2 059 46 593 9 609 8 140 76 055 63 238 316 498 506 736 1 257 114 201 467 1 385 567 1 252 140 249 866 143 507 53 158

23 491 .. 11 227 35 540 17 819 10 525 .. 1 316 5 472 64 062 80 896 .. 9 863 327 4 610 .. 60 448 .. 50 424 550 119 713 .. 4 510 5 137 38 484 .. .. 2 062 46 464 .. .. 76 903 63 650 318 857 .. .. .. .. .. .. .. 54 002

1 2 http://dx.doi.org/10.1787/888933336107

Population growth rates Annual growth in percentage 3 year average at end of period 2012-14 or latest available period

3 year average at beginning of period 2002-04

3.0 2.5 2.0 1.5 1.0 0.5 0.0 -0.5 -1.0

1 2 http://dx.doi.org/10.1787/888933334925

OECD FACTBOOK 2015-2016 © OECD 2016

13

POPULATION AND MIGRATION • POPULATION

FERTILITY Together with mortality and migration, fertility is a core driver of population growth, which reflects both the causes and effects of economic and social developments. Total fertility rates in OECD countries have declined dramatically over the past few decades, falling from an average of 2.8 children per woman of childbearing age in 1970 to 1.7 in the early 2000s. The decline has been especially pronounced – by around or greater than three children per woman on average – in Korea, Mexico and Turkey, but a number of other OECD countries have also seen the total fertility rate fall by at least one child per woman on average since 1970. There are many reasons behind the decline in fertility, but the postponement of family formation and a decrease in desired family size –

themselves driven by rising female education and employment, insufficient support for families juggling work and children, the need to generate a secure job and income, and growing housing problems – have played a central role.

Definition The total fertility rate in a specific year is the total number of children that would be born to each woman if she were to live to the end of her child-bearing years and give birth to children in agreement with the prevailing age-specific fertility rates.

Comparability

Overview Prior to the start of the economic crisis in 2008, fertility rates in many – although not all – OECD countries were recovering slightly from the record lows observed in the early 2000s. Fertility rates continued to decline or remained stable in Austria, Japan, Korea and Switzerland – all low fertility countries. Fertility rebounded in countries with higher initial fertility rates, and even exceeded the replacement level in New Zealand and Iceland. This fertility rebound stalled in many OECD countries in 2008, possibly as a consequence of the economic crisis. Since 2008, fertility rates have fallen in more than two-thirds of OECD countries, with the decline greater than two decimal points in three European OECD countries (Denmark, Estonia and Iceland) and the United States (a relatively high fertility country). Israel and Japan have seen the largest increases since the start of the economic crisis, but no OECD country has seen the total fertility rate increase by more than 1 decimal point since 2008. In 2013, the highest fertility rate was recorded in Israel, where women had almost one child more than in the second country, Mexico. Israel and Mexico were in fact the only two OECD countries with a total fertility rate above the replacement fertility rate (2.1 children per woman). Anglophone and Nordic countries were typically at the higher end, while continental Europe (France being the one major exception) generally reported low fertility, along with even lower fertility rates in the East Asian and Southern Europe OECD countries. Fertility rates were particularly low in Portugal and Korea, with two parents replacing themselves in the next generation by little more than one child, on average. Fertility rates were generally higher but have declined sharply in the emerging economies; with current rates only above replacement levels in India, Indonesia and South Africa.

14

The total fertility rate is generally computed by summing up the age-specific fertility rates defined over a five-year interval. Assuming there are no migration flows and that mortality rates remain unchanged, a total fertility rate of 2.1 children per woman generates broad stability of population: it is also referred to as the “replacement fertility rate”, as it ensures replacement of the woman and her partner with another 0.1 children per woman to counteract infant mortality. Data are collected every year from national statistical institutes.

Sources • For OECD member countries and Brazil, Russia and South Africa: National statistical offices. • For China, India and Indonesia: World Bank World Development indicators. • Fertility rates: OECD (2015), “Family Indicators”, OECD Social and Welfare Statistics (database).

Further information Analytical publications • OECD (2011), Doing Better for Families, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Methodological publications • Adema, W., N. Ali and O. Thévenon (2014), “Changes in Family Policies and Outcomes: Is there Convergence?”, OECD Social Employment and Migration Working Papers, No. 157, OECD Publishing.

Online databases • United Nations World Population Prospects.

Websites • OECD Family Database, www.oecd.org/social/family/ database. • World Bank – World Development Indicators, http:// data.worldbank.org/indicator. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • POPULATION FERTILITY

Total fertility rates Number of children born to women aged 15 to 49 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

1970

1980

1990

2000

2005

2006

2007

2008

2009

2010

2011

2012

2013

2.86 2.29 2.25 2.33 3.95 1.91 1.95 .. 1.83 2.48 2.03 2.40 1.97 2.81 3.87 .. 2.42 2.13 4.53 1.98 6.72 2.57 3.17 2.50 2.20 2.83 2.40 2.21 2.90 1.94 2.10 5.00 2.43 2.48 2.43 2.76 5.02 5.47 5.49 5.47 2.01 5.59

1.89 1.65 1.68 1.68 2.72 2.10 1.55 2.02 1.63 1.95 1.56 2.23 1.92 2.48 3.23 3.14 1.68 1.75 2.82 1.50 4.71 1.60 2.03 1.72 2.28 2.18 2.31 2.11 2.22 1.68 1.55 4.63 1.90 1.84 2.01 2.17 4.07 2.71 4.68 4.43 1.90 4.79

1.90 1.46 1.62 1.71 2.59 1.89 1.67 2.05 1.79 1.78 1.45 1.40 1.84 2.31 2.12 3.02 1.36 1.54 1.57 1.62 3.36 1.62 2.18 1.93 1.99 1.56 2.09 1.46 1.36 2.14 1.59 3.07 1.83 2.08 1.78 1.91 2.81 2.51 3.88 3.12 1.89 3.66

1.76 1.36 1.64 1.49 2.05 1.14 1.77 1.36 1.73 1.87 1.38 1.27 1.33 2.08 1.90 2.95 1.26 1.36 1.47 1.78 2.65 1.72 1.98 1.85 1.37 1.56 1.29 1.26 1.23 1.55 1.50 2.27 1.64 2.06 1.48 1.67 2.36 1.51 3.15 2.48 1.20 2.87

1.85 1.41 1.74 1.54 1.84 1.28 1.80 1.52 1.80 1.92 1.34 1.32 1.32 2.05 1.88 2.84 1.32 1.26 1.08 1.62 2.45 1.71 1.97 1.84 1.24 1.42 1.25 1.26 1.33 1.77 1.42 2.12 1.76 2.06 1.49 1.66 2.07 1.59 2.82 2.49 1.29 2.56

1.88 1.41 1.78 1.59 1.83 1.33 1.85 1.58 1.84 1.98 1.33 1.38 1.35 2.07 1.94 2.88 1.35 1.32 1.12 1.64 2.42 1.72 2.01 1.90 1.27 1.38 1.24 1.31 1.36 1.85 1.44 2.12 1.82 2.11 1.52 1.69 2.00 1.60 2.75 2.50 1.31 2.53

1.99 1.39 1.80 1.66 1.88 1.44 1.84 1.69 1.83 1.95 1.37 1.38 1.32 2.09 2.03 2.90 1.37 1.34 1.25 1.61 2.38 1.72 2.18 1.90 1.31 1.35 1.25 1.38 1.38 1.88 1.46 2.16 1.86 2.12 1.54 1.72 1.94 1.62 2.69 2.49 1.42 2.53

2.02 1.42 1.86 1.68 1.92 1.50 1.89 1.72 1.85 1.99 1.38 1.47 1.35 2.14 2.07 2.96 1.42 1.37 1.19 1.60 2.35 1.77 2.19 1.96 1.39 1.40 1.32 1.53 1.45 1.91 1.48 2.15 1.91 2.07 1.60 1.76 1.90 1.63 2.64 2.48 1.50 2.52

1.97 1.40 1.83 1.67 1.92 1.49 1.84 1.70 1.86 1.99 1.36 1.49 1.33 2.22 2.07 2.96 1.41 1.37 1.15 1.59 2.32 1.79 2.13 1.98 1.40 1.35 1.41 1.53 1.38 1.94 1.50 2.08 1.89 2.00 1.60 1.74 1.86 1.64 2.60 2.46 1.54 2.51

1.95 1.44 1.84 1.63 1.89 1.49 1.87 1.72 1.87 2.02 1.39 1.47 1.26 2.20 2.06 3.03 1.41 1.39 1.23 1.63 2.28 1.80 2.17 1.95 1.38 1.39 1.40 1.57 1.37 1.98 1.54 2.06 1.92 1.93 1.59 1.75 1.84 1.65 2.56 2.43 1.57 2.50

1.92 1.43 1.81 1.61 1.85 1.43 1.75 1.61 1.83 2.00 1.39 1.40 1.24 2.02 2.04 3.00 1.39 1.39 1.24 1.51 2.26 1.76 2.09 1.88 1.30 1.35 1.45 1.56 1.34 1.90 1.52 2.03 1.91 1.89 1.55 1.71 1.82 1.66 2.53 2.40 1.58 2.44

1.93 1.44 1.79 .. 1.80 1.45 1.73 1.56 1.80 1.99 1.40 1.35 1.34 2.04 2.01 3.05 1.42 1.41 1.30 1.57 2.24 1.72 2.10 1.85 1.30 1.28 1.34 1.58 1.32 1.91 1.53 2.09 1.92 1.88 1.56 1.71 1.81 1.66 2.51 2.37 1.69 2.39

1.88 1.44 1.76 .. .. 1.46 1.67 1.52 1.75 1.98 1.41 1.30 1.34 1.93 1.96 3.03 1.39 1.43 1.19 1.55 2.22 1.68 2.01 1.78 1.26 1.21 1.34 1.55 1.27 1.89 1.52 2.07 1.83 1.86 1.52 1.67 1.80 1.67 2.48 2.34 1.71 2.34

1 2 http://dx.doi.org/10.1787/888933336165

Total fertility rates Number of children born to women aged 15 to 49 2013 or latest available year

1970 or first available year

7

6

5

4

3 Replacement level 2.1 2

1

1 2 http://dx.doi.org/10.1787/888933334982

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15

POPULATION AND MIGRATION • POPULATION

POPULATION BY REGION Population is unevenly distributed among regions within countries. Differences in climatic and environmental conditions discourage human settlement in some areas and favour concentration of the population around a few urban centres. This pattern is reinforced by higher economic opportunities and wider availability of services stemming from urbanisation itself.

Definition The number of inhabitants of a given region, i.e. its total population, can be measured as either its average annual population or as the population at a specific date during the year considered. The average population during a calendar year is generally calculated as the arithmetic mean of the population on 1 January of two consecutive years, although some countries estimate it on a date close to 1 July.

Comparability The main problem with economic analysis at the subnational level is the unit of analysis, i.e. the region. The word “region” can mean very different things both within and among countries, with significant differences in area and population. The population across OECD regions ranges from about 600 inhabitants in Stikine, British Columbia (Canada) to 39 million in California (the United States). To address this issue, the OECD has classified regions within each member country to facilitate comparability at the same territorial level. The classification is based on two

territorial levels: the higher level (TL2) consists of 362 large regions and the lower level (TL3) consists of 1 802 small regions. These two levels are used as a framework for implementing regional policies in most countries. In Brazil, China, India, Russia and South Africa only TL2 large regions have been identified. This classification (which, for European Union countries, is largely consistent with the Eurostat NUTS classification) facilitates comparability of regions at the same territorial level. All the regional data refer to small regions with the exception of Brazil, China, India, Russia and South Africa. In addition, the OECD has established a regional typology to take into account geographical differences and enable meaningful comparisons between regions belonging to the same type. Regions have been classified as predominantly rural, intermediate and predominantly urban on the basis of the percentage of population living in local rural units. The metropolitan database identifies about 1 200 urban areas (with a population of 50 000 or more) in 30 OECD countries. Urban areas are defined on the basis of population density and commuting patterns to better reflect the economic function of cities in addition to their administrative boundaries. Functional urban areas can extend across administrative boundaries, reflecting the economic geography of where people actually live and work. Urban areas in Turkey refer to the 144 cities classified according the national definition and refer to the year 2012. Comparability with other countries is, therefore, limited.

Overview In 2014, 10% of regions accounted for approximately 40% of the total population in OECD countries. The concentration of population was highest in Canada and Au s t ra l i a w h e r e d i f f e r e n c e s i n c l i m a t i c a n d environmental conditions discourag e human settlement in some areas. In 2014, two-thirds of the OECD urban population live in cities (above 50 000 inhabitants). However the urban experience is very different from country to country. In Korea, 90% of the national population is concentrated in cities (more than 45 million people), while only 40% in the Slovak Republic live in cities (more than 2 million people). In 2014, almost half of the total OECD population (48%) lived in predominantly urban regions, which accounted for around 6% of the total area. Predominantly, rural regions accounted for one-fourth of the total population and 83% of land area. In Ireland, Finland and Slovenia the share of national population in rural regions was twice as high as the OECD average.

16

Sources • OECD (2013), OECD Regions at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2014), OECD Regional Outlook, OECD Publishing. • OECD (2014), OECD Territorial Reviews, OECD Publishing.

Statistical publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing.

Online databases • OECD Regional Statistics.

Websites • Regions at a Glance interactive, rag.oecd.org. • Regional statistics and indicators, www.oecd.org/gov/ regional/statisticsindicators. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • POPULATION POPULATION BY REGION

Share of national population in the ten per cent of regions with the largest population

Distribution of the national population into urban, intermediate and rural regions

Percentage, 2000 and 2014

Percentage, 2014

2000

Urban

2014

Intermediate

Rural

NLD BEL GBR AUS KOR DEU JPN CAN PRT ITA TUR ESP OECD CHL MEX NZL USA CHE GRC FRA DNK FIN IRL AUT SWE POL HUN NOR CZE EST SVK LUX ISL SVN

CAN AUS CHL USA IDN MEX ESP GRC SWE OECD IND PRT NZL BRA FIN KOR CHE JPN ITA AUT RUS GBR HUN SVN DEU FRA NLD ISR CHN NOR IRL ZAF EST BEL CZE DNK POL SVK

0

10

20

30

40

50

60

0

70

20

40

60

80

100

1 2 http://dx.doi.org/10.1787/888933335957

1 2 http://dx.doi.org/10.1787/888933335362

Distribution of the national area into urban, intermediate and rural regions

Urban population by city size 2014

Percentage, 2014 Percentage share of national population (left scale) Urban population, millions (right scale) 100

Urban

Intermediate

Rural

250

90 80

200

70 60

150

50 40

100

30 20

50

10 0

0

1 2 http://dx.doi.org/10.1787/888933335821

BEL DEU ITA GBR TUR KOR JPN ESP USA CHE FRA PRT EST OECD MEX NZL DNK SVK FIN GRC POL CHL SWE AUT IRL AUS CZE HUN CAN NOR LUX SVN ISL 0

20

40

60

80

100

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17

POPULATION AND MIGRATION • POPULATION

ELDERLY POPULATION BY REGION In all OECD countries, populations aged 65 years and over have dramatically increased over the last decades, both in size and as a percentage of total population. Elderly people, it turns out, tend to be concentrated in few areas within each country, which means that a small number of regions will have to face a number of specific social and economic challenges raised by ageing population.

Definition The elderly population is the number of inhabitants of a given region aged 65 or older. The population can be either the average annual population or the population at a specific date during the year considered.

Comparability As for the other regional statistics, the comparability of elderly population data is affected by differences in the definition of the regions and the different geography of rural and urban communities, both within and among countries. In order to better show the rural/urban divide, elderly dependency rates are presented for rural and urban regions, but not for intermediary regions, which explains that for some countries, the country average can be outside the rural/urban range. All the regional data shown here refer to small regions with the exception of Brazil, China, India, Russia and South Africa.

The elderly dependency rate is defined as the ratio between the elderly population and the working age (15-64 years) population.

Overview In most OECD countries the population is ageing. Due to higher life expectancy and low fertility rates, the elderly population (those aged 65 years and over) accounts for almost 16% of the OECD population in 2014, up from just over 13% 14 years earlier. The proportion of elderly population is remarkably lower in the emerging economies (South Africa, Brazil and China) and Mexico, Turkey, Chile and Israel. The elderly population in OECD countries has increased more than three times faster than the total population between 2000 and 2014. The rate of ageing between different parts of a country can be quite d i f f e r e n t , a s a n i n c r e a s e i n t h e g e o g ra p h i c concentration of the elderly may arise from inward migration of the elderly or by ageing “in place” because the younger generations have moved out of the regions. The ratio of the elderly to the working age population, the elderly dependency rate, is steadily growing in OECD countries. The elderly dependency rate gives an indication of the balance between the retired and the economically active population. In 2014 this ratio was 24% in OECD countries, with substantial differences between countries (42% in Japan versus 11% in Turkey). Differences among regions within the same countries are also large. The higher the regional elderly dependency rate, the higher the challenges faced by regions in generating wealth and sufficient resources to provide for the needs of the population. Concerns may arise about the financial self-sufficiency of these regions to generate taxes to pay for the services for the elderly.

18

Sources • OECD (2013), OECD Regions at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2015), Ageing and Employment Policies, OECD Publishing. • OECD (2014), OECD Regional Outlook, OECD Publishing. • OECD (2011), The Future of Families to 2030, OECD Publishing. • Oliveira Martins J., et al. (2005), “The Impact of Ageing on Demand, Factor Markets and Growth”, OECD Economics Department Working Papers, No. 420.

Statistical publication • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Online databases • OECD Regional Database.

Websites • Regions at a Glance Interactive, rag.oecd.org. • Regional statistics and indicators, www.oecd.org/gov/ regional/statisticsindicators. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • POPULATION ELDERLY POPULATION BY REGION

Elderly population As a percentage of total population, 2000 and 2014 2014

2000

30

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933334816

Regional elderly population Average annual growth in percentage, 2000-14 Maximum

Country average

Minimum

12 10 8 6 4 2 0 -2 -4 -6

1 2 http://dx.doi.org/10.1787/888933335744

Elderly dependency rate in urban and rural regions Percentage, 2014 In urban regions

Elderly dependency rate

In rural regions

60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933335890

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POPULATION AND MIGRATION • INTERNATIONAL MIGRATION

IMMIGRANT AND FOREIGN POPULATION International migration

As a result of successive waves of migration flows from varying destinations, countries differ in the share and composition of immigrants and foreign population. The definition of these populations is key for international comparisons.

Definition Nationality and place of birth are the two criteria most commonly used to define the “immigrant” population. The foreign-born population covers all persons who have ever migrated from their country of birth to their current country of residence. The foreign population consists of persons who still have the nationality of their home country. It may include persons born in the host country.

Most data are taken from the contributions of national correspondents who are part of the OECD Expert Group on International Migration. The foreign-born population data shown here include persons born abroad as nationals of their current country of residence. The prevalence of such persons among the foreign-born can be significant in some countries, in particular France and Portugal who received large inflows of repatriates from former colonies. The EU28 aggregate is a weighted average and does not include Croatia or Malta.

Comparability The difference across countries between the size of the foreign-born population and that of the foreign population depends on the rules governing the acquisition of citizenship in each country. In some countries, children born in the country automatically acquire the citizenship of their country of birth while in other countries, they retain the nationality of their parents. In some others, they retain the nationality of their parents at birth but receive that of the host country at their majority. Differences in the ease with which immigrants may acquire the citizenship of the host country explain part of the gap between the two. For example, residency requirements vary from as little as four years in Canada to as much as ten years in some other countries. In general, the foreign-born criterion gives substantially higher percentages for the immigrant population than the definition based on nationality because of naturalisations. The place of birth changes only if country borders change.

Overview The share of the foreign-born population in the total population is especially high in Luxembourg, Switzerland, New Zealand, Australia, Israel and Canada where it ranges from 20% to 44%. In a number of other countries e.g. Austria, Ireland, Slovenia, Sweden, Belgium, Norway, Spain and the United States the share is above 13%. It has increased in the past decade in all countries for which data are available with the exception of Israel and Estonia. The proportion of foreign-born in the population as a whole roughly doubled over the past 13 years in Ireland, Norway and Spain. By contrast, the foreign population tends to increase more slowly, because inflows of foreign nationals tend to be counterbalanced by persons acquiring the nationality of the host country.

20

Sources • OECD (2015), International Migration Outlook, OECD Publishing.

Further information Analytical publications • Arslan C. et al. (2014), “A New Profile of Migrants in the Aftermath of the Recent Economic Crisis”, OECD Social, Employment and Migration Working Papers, No. 160, OECD Publishing. • OECD (2011), “Tackling the Policy Challenges of Migration, Regulation, Integration, Development”, Development Centre Studies, OECD Publishing.

Statistical publications • OECD (2015), Connecting with Emigrants, A Global Profile of Diasporas 2015, OECD Publishing. • OECD (2015), OECD Indicators of Immigrant Integration 2015, OECD Publishing.

Methodological publications • Lemaître, G. and C. Thoreau, (2006), Estimating the foreignborn population on a current basis, OECD, Paris.

Online databases • OECD International Migration Statistics.

Websites • International migration policies and data, www.oecd.org/ migration/mig. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • INTERNATIONAL MIGRATION IMMIGRANT AND FOREIGN POPULATION

Foreign-born and foreign populations As a percentage of all foreign-born

As a percentage of total population Foreign-born population

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Foreign population

Foreign-born nationals

2000

2005

2010

2013

2000

2005

2010

2013

2011 or latest available year

23.0 10.4 10.3 17.4 .. 4.2 5.8 18.4 2.6 10.1 12.5 .. 2.9 6.0 8.7 32.2 .. 1.0 0.3 33.2 0.5 10.1 17.2 6.8 .. 5.1 .. .. 4.9 11.3 21.9 1.9 7.9 11.0 .. .. .. .. .. .. .. ..

24.1 14.5 12.1 18.7 1.5 5.1 6.5 16.9 3.4 11.3 12.6 .. 3.3 8.3 12.6 28.1 .. .. .. 36.2 0.5 10.6 20.3 8.2 .. 7.1 4.6 .. 11.1 12.5 23.8 .. 9.2 12.1 .. .. .. .. .. .. .. ..

26.6 15.7 14.9 19.9 2.2 6.3 7.7 16.0 4.6 11.7 13.0 7.4 4.5 10.9 17.0 24.5 8.9 .. .. 40.5 0.8 11.2 27.3 11.6 8.1 .. 11.2 14.3 14.8 26.5 11.2 12.9 .. .. .. .. .. .. .. ..

27.6 16.7 15.5 20.0 .. 7.1 8.5 10.1 5.6 .. 12.8 .. 4.5 11.5 16.4 22.6 .. .. .. 43.7 0.8 11.6 28.2 13.9 .. .. 3.2 16.1 13.4 16.0 28.3 .. 12.3 13.1 .. .. .. .. .. .. .. ..

.. 8.8 8.4 .. .. 1.9 4.8 .. 1.8 .. 8.9 2.9 1.1 .. .. .. 2.4 1.3 0.4 37.3 .. 4.2 .. 4.0 .. 2.1 0.5 .. .. 5.4 19.3 .. 4.0 .. .. .. .. .. .. .. .. ..

.. 9.7 8.6 .. .. 2.7 5.0 19.0 2.2 5.8 8.2 5.0 1.5 4.7 .. .. 4.6 1.6 1.1 41.1 .. 4.2 .. 4.8 .. 4.0 0.5 .. 9.5 5.3 20.3 .. 5.0 7.2 .. .. .. .. .. .. .. ..

.. 10.9 10.2 .. .. 4.0 6.2 16.3 3.1 6.1 8.3 7.3 2.1 6.6 12.3 .. 7.6 1.7 2.0 43.5 0.2 4.6 .. 7.6 .. 4.2 1.3 4.7 12.4 6.8 22.0 .. 7.2 7.3 .. .. .. .. .. .. .. ..

.. 12.6 10.9 .. .. 4.2 7.1 16.1 3.8 .. 9.3 6.2 1.4 7.0 .. .. 8.1 1.6 2.0 45.8 .. 4.9 .. 9.5 .. 3.7 1.1 5.4 10.7 7.2 23.3 .. 7.7 7.0 .. .. .. .. .. .. .. ..

.. 36.5 44.2 .. .. 59.1 40.8 37.4 46.3 53.2 52.6 20.0 71.9 47.5 29.0 .. 25.0 .. .. 13.9 .. 67.3 .. 46.2 84.8 67.3 79.9 74.5 22.1 66.6 31.9 .. 41.6 49.1 .. .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336396

Foreign-born population As a percentage of total population 2013 or latest available year

2000 or first available year

50 45 40 35 30 25 20 15 10 5 0

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POPULATION AND MIGRATION • INTERNATIONAL MIGRATION

TRENDS IN MIGRATION Permanent immigrant inflows are presented by category of entry which is a key determinant of immigrant results on the labour market. They cover regulated movements of foreigners as well as free movement migration.

statistics, whose coverage can vary by a factor of one to three. However, the extent to which changes in status are identified and the coverage of “permanent” free movement may vary somewhat across countries. Overall, the standardisation is applied to 23 OECD countries.

Definition

The year of reference for these statistics is often the year when the permit was granted rather than the year of entry. Some persons admitted on a temporary basis are sometimes allowed to change to a permanent status. They are counted in the year the change of status occurred. For example, asylum seekers are not considered migrants but are candidates for humanitarian migrant status. Only those who are recognised as refugees – or who obtain another permanent-type residence title – will be included in the permanent immigrant inflows statistics, in the year they are granted refugee or another permanent-type status. As a consequence, the unprecedented inflows of asylum seekers observed in the EU in 2015 (1.3 million requests filed) will appear in the permanent immigrant inflows in the subsequent years only, and only a part of these will figure there.

Permanent immigrant inflows cover regulated movements of foreigners considered to be settling in the country from the perspective of the destination country. In countries such as Australia, Canada, New Zealand and the United States, this consists of immigrants who receive the right of “permanent” residence. In other countries, it generally refers to immigrants who are granted a residence permit which is indefinitely renewable, although the renewability is sometimes subject to conditions, such as the holding of a job. Excluded are international students, trainees, persons on exchange programmes, seasonal or contract workers, service providers, installers, artists entering the country to perform or persons engaging in sporting events, etc. Permits for persons in this latter group may be renewable as well, but not indefinitely. Migrants are defined as “free movement” when they have some kind of basic rights, usually accorded through international agreements, to enter and leave a country that result in few restrictions being placed on their movements or durations of stay, such as citizens of EU countries within the EU. Their movements are not always formally recorded and sometimes have to be estimated.

Sources • OECD (2015), International Migration Outlook, OECD Publishing.

Further information Comparability This standardisation according to the concept of “permanent immigrant inflows” represents a considerable improvement compared with compilations of national

Overview Total permanent immigration increased by about 1.6% overall in OECD countries in 2013 relative to 2012, with the migration picture being a mixed one at the country level. More than half of OECD countries showed increases, with Germany, Korea and Denmark being among the countries which progressed the most. Permanent migration flows diminished markedly in 2013 in Spain, Italy and the United States. Migration to European countries continues to be characterised by free circulation within the European Economic Area (EEA). In Austria, Switzerland, Germany and Norway, it represents 78%, 78%, 76% and 63%, respectively, of permanent international migration. Family reunification accounted for over one third of all permanent migration to OECD countries in 2013 (minus 1% compared to 2012) and free movement for 30% (up 4% compared to 2012).

22

Analytical publications • Arslan C. et al. (2014), “A New Profile of Migrants in the Aftermath of the Recent Economic Crisis”, OECD Social, Employment and Migration Working Papers, No. 160, OECD Publishing. • OECD (2015), “Is this humanitarian migration crisis different?”, Migration Policy Debates, No. 7, Paris.

Statistical publications • OECD (2015), Connecting with Emigrants, A Global Profile of Diasporas, OECD Publishing. • OECD (2015), OECD Indicators of Immigrant Integration 2015, OECD Publishing.

Methodological publications • Dumont, J.C. and Lemaître G. (2005), “Counting Immigrants and Expatriates in OECD Countries: A New Perspective”, OECD Social, Employment and Migration Working Papers, No. 25. • Lemaître G. (2005), “The Comparability of International Migration Statistics: Problems and Prospects”, OECD Statistic Brief, No. 9.

Online databases • OECD International Migration Statistics.

Websites • International migration policies and data, www.oecd.org/ migration/mig. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • INTERNATIONAL MIGRATION TRENDS IN MIGRATION

Permanent inflows by category of entry Thousands, 2013

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Work

Free movements

Accompanying family of workers

61.3 1.3 7.8 64.7 .. .. 7.9 .. 1.2 26.8 24.3 .. .. .. 2.7 .. 73.1 25.1 1.6 .. 16.6 9.2 10.1 3.8 .. 6.4 .. .. 39.8 3.9 2.2 .. 86.4 75.9 .. .. .. .. .. .. .. ..

40.3 50.5 27.3 .. .. .. 27.7 .. 10.2 95.9 354.8 .. .. .. 23.1 .. 77.9 .. .. .. .. 65.2 3.7 37.8 .. 10.6 .. .. 105.1 22.0 105.8 .. 98.3 .. .. .. .. .. .. .. .. ..

67.7 0.3 83.3 .. .. 3.5 .. .. .. .. 0.3 .. 2.5 5.1 .. 10.3 .. 3.2 .. .. 2.4 .. 37.6 85.2 .. .. .. .. .. .. .. ..

Family

Humanitarian

Other

Total

60.2 10.2 22.3 79.6 .. .. 5.2 .. 8.9 104.6 56.0 .. .. .. 13.9 .. 78.6 20.6 31.4 .. 19.2 21.1 16.9 11.9 .. 9.6 .. .. 41.2 29.5 21.3 .. 27.1 649.8 .. .. .. .. .. .. .. ..

20.0 2.5 3.0 31.0 .. .. 3.9 .. 3.1 11.7 30.7 .. .. .. 0.2 .. 8.8 0.2 0.0 .. 0.2 10.0 3.4 6.7 .. 0.1 .. .. 0.5 28.9 5.1 .. 20.7 119.6 .. .. .. .. .. .. .. ..

4.0 0.3 .. 0.0 .. .. 4.2 .. 0.5 20.9 2.4 .. .. .. .. .. 4.9 11.5 28.6 .. 18.4 .. .. .. .. 3.2 .. .. 8.8 .. 2.0 .. 20.7 59.4 .. .. .. .. .. .. .. ..

253.5 65.0 60.3 258.6 .. .. 52.4 .. 23.9 259.8 468.8 .. .. .. 40.2 .. 245.8 57.3 66.7 .. 54.4 105.5 44.4 60.3 .. 27.0 .. .. 195.3 86.7 136.2 .. 291.0 989.9 .. .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336420

Permanent inflows by category of entry Percentage of total permanent inflows, 2013 Work

Free movements

Accompanying family of workers

Family

Humanitarian

Other

100 90 80 70 60 50 40 30 20 10 0

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POPULATION AND MIGRATION • INTERNATIONAL MIGRATION

MIGRATION AND EMPLOYMENT Changes in the size of the working-age population affect more strongly the foreign-born than the native-born for whom such changes are hardly noticeable from one year to another. This is notably due to the impact of net migration. In most OECD countries, employment rates for immigrants are lower than those for native-born persons. However, the situation is more diverse if one disaggregates employment rates by educational attainment.

Definition The employment rate is calculated as the share of employed persons in the 25-64 population (active and inactive persons). In accordance with ILO definitions, employed persons are those who worked at least one hour or who had a job but were absent from work during the reference week. The classification of educational attainment shown is based on the International Standard Classification of Education (ISCED) categories. Generally speaking, “low” corresponds to less than upper secondary education; “intermediate” to upper secondary education; and “high” to tertiary education. Tertiary education includes programmes of high-level vocational education whose graduates feed into technical or semi-professional occupations.

Comparability Data for the European countries are from the European Union Labour Force Survey. Data for other countries are mostly taken from national labour force surveys. Even if employment levels can at times be affected by changes in survey design and by survey implementation problems (e.g. non-response), data on employment rates are generally consistent over time. However, comparability of education levels between immigrants and the native-born population and across countries is only approximate. The educational qualifications of some origin countries may not fit exactly into national educational categories because the duration of study or the programme content for what appear to be equivalent qualifications may not be the same. Likewise, the reduction of the ISCED classification into three categories may result in some loss of information regarding the duration of study, the programme orientation, etc. For example, high educational qualifications can include programmes of durations varying from two years (in the case of short, universitylevel technical programmes) to seven years or more (in the case of PhDs). The EU28 aggregate is a weighted average.

Overview Labour market outcomes of immigrants and nativeborn vary significantly across OECD countries, and differences by educational attainment are even larger. In all OECD countries, the employment rate increases with education level. While people with tertiary education find work more easily and are less exposed to unemployment, access to tertiary education does not necessarily guarantee equal employment rates for immigrants and native-born persons. In all OECD countries but Chile, employment rates are higher for native-born persons with high educational qualifications than for their foreign-born counterparts. The situation is more diverse for persons with low educational attainment. In the United States, Luxembourg and to a lesser extent in some southern European countries such as Italy and Greece, foreignborn immigrants with low educational qualifications have higher employment rates than their native-born counterparts. The opposite is true in most other countries, in particular in Sweden, the Netherlands, Denmark and the United Kingdom. The higher employment rate of foreign-born persons with low educational attainment in some countries may reflect the persistent demand for workers in low-skilled jobs which are hardly taken up by the in-coming cohorts of native-born workers.

24

Sources • OECD (2015), International Migration Outlook, OECD Publishing.

Further information Analytical publications • OECD (2014), Jobs for Immigrants (Vol. 4), Labour Market Integration in Italy, OECD Publishing. • OECD (2014), Matching Economic Migration with Labour Market Needs, OECD Publishing.

Statistical publications • OECD (2015), Connecting with Emigrants, A Global Profile of Diasporas 2015, OECD Publishing. • OECD (2015), OECD Indicators of Immigrant Integration 2015, OECD Publishing.

Methodological publications • Dumont, J.C. and Lemaître G. (2005), “Counting Immigrants and Expatriates in OECD Countries: A New Perspective”, OECD Social, Employment and Migration Working Papers, No. 25.

Online databases • OECD International Migration Statistics.

Websites • International migration policies and data, www.oecd.org/ migration/mig. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • INTERNATIONAL MIGRATION MIGRATION AND EMPLOYMENT

Employment rates of native- and foreign-born population by educational attainment As a percentage of population aged 25-64 2007

2014

Native-born

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Foreign-born

Native-born

Foreign-born

Low

High

Total

Low

High

Total

Low

High

Total

Low

High

Total

.. 57.1 51.8 .. .. 45.7 67.4 56.5 58.0 59.0 56.1 56.7 38.4 82.3 58.6 42.8 51.5 .. .. 52.3 63.0 63.7 69.7 66.5 41.2 71.3 29.0 56.1 57.8 71.1 65.0 .. 54.7 51.5 57.0 .. .. .. .. .. .. 27.8

.. 89.5 86.3 .. .. 85.3 88.8 88.3 85.6 85.0 87.7 83.8 80.5 92.5 88.3 85.4 80.6 .. .. 83.8 82.8 88.4 85.3 90.3 84.6 85.8 84.2 88.0 85.5 90.5 93.0 .. 88.9 84.0 86.2 .. .. .. .. .. .. 79.9

77.2 76.5 71.9 .. .. 74.6 81.3 80.1 76.2 73.7 76.2 68.3 65.4 87.8 74.0 71.2 64.4 .. .. 69.8 67.8 79.2 81.5 82.3 65.7 74.3 70.0 75.0 69.7 84.8 84.5 .. 76.8 76.5 72.1 .. .. .. .. .. .. 36.3

.. 57.5 39.5 .. .. 45.7 54.1 45.7 54.1 54.3 52.3 74.8 50.1 86.9 60.3 43.0 66.9 .. .. 70.5 66.6 50.9 60.7 58.1 15.3 75.4 40.4 56.7 71.4 51.5 67.3 .. 47.1 68.8 59.5 .. .. .. .. .. .. 60.8

.. 75.5 73.8 .. .. 81.9 76.4 83.1 76.5 70.8 70.5 70.9 77.5 88.4 80.9 80.4 75.2 .. .. 85.1 69.3 77.7 80.0 86.6 65.7 87.0 87.2 81.8 78.8 78.3 82.7 .. 83.2 80.3 77.8 .. .. .. .. .. .. 75.3

71.1 67.3 55.3 .. .. 69.6 63.9 75.2 70.7 62.1 62.8 72.7 70.7 86.8 75.9 69.0 71.0 .. .. 76.3 65.5 64.3 75.3 75.3 36.3 79.2 70.1 69.2 74.9 67.7 75.5 .. 70.6 75.2 68.6 .. .. .. .. .. .. 63.7

.. 54.2 49.4 56.6 .. 42.7 63.1 60.3 53.4 55.3 57.9 45.5 45.1 76.0 47.0 .. 48.0 .. .. 55.6 63.4 61.5 68.7 62.5 39.3 62.8 32.6 49.4 49.3 71.3 68.5 47.6 60.8 45.0 52.3 .. .. .. .. .. .. ..

.. 87.5 87.0 83.2 .. 84.6 87.6 85.6 84.3 85.6 89.8 69.4 81.8 90.5 83.6 .. 78.8 .. .. 86.6 79.2 89.1 89.8 91.2 86.3 83.2 80.0 84.0 78.7 91.9 92.1 76.5 86.4 81.8 84.8 .. .. .. .. .. .. ..

76.5 77.1 73.4 77.2 .. 76.8 79.3 78.1 75.6 74.2 81.0 56.2 69.5 84.8 69.3 .. 62.8 .. .. 74.8 67.7 79.0 81.7 82.7 69.0 70.2 69.4 71.6 63.5 86.5 86.3 54.5 78.2 73.2 72.1 .. .. .. .. .. .. ..

.. 50.9 42.1 52.7 .. 46.9 51.9 69.3 54.4 50.5 58.1 55.9 59.5 83.3 43.7 .. 58.9 .. .. 64.9 64.5 48.6 61.9 58.1 .. 66.0 42.2 45.5 49.8 51.8 70.1 38.8 53.1 65.8 53.8 .. .. .. .. .. .. ..

.. 76.6 72.8 77.5 .. 81.9 76.0 73.4 68.4 71.6 78.0 54.4 81.6 83.7 73.7 .. 69.0 .. .. 83.5 76.8 79.6 83.1 81.7 80.7 79.1 75.5 68.2 66.8 78.3 83.0 68.3 81.1 77.1 75.7 .. .. .. .. .. .. ..

72.7 67.4 57.7 73.3 .. 74.9 66.6 68.8 63.9 60.6 70.8 54.3 75.0 83.9 66.9 .. 63.5 .. .. 76.4 67.2 64.2 77.6 73.8 71.8 72.7 67.0 60.8 57.9 68.9 78.3 55.8 74.0 72.4 66.1 .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336388

Gap in employment rates between foreign- and native-born population by educational attainment Percentage points, 2014 Low education level

High education level

30 Foreign-born have higher employment rates than native-born 20 10 0 -10 -20 -30

Foreign-born have lower employment rates than native-born

1 2 http://dx.doi.org/10.1787/888933335228

OECD FACTBOOK 2015-2016 © OECD 2016

25

POPULATION AND MIGRATION • INTERNATIONAL MIGRATION

MIGRATION AND UNEMPLOYMENT Immigrant workers are more affected by unemployment than native-born workers in traditional European immigration countries. Conversely, in some settlement countries (Australia, New Zealand and the United States) as well as in Hungary, the unemployment rate depends less on the place of birth. Some groups, such as young immigrants, women or older immigrants have greater difficulties in finding jobs.

in the survey design and by survey implementation problems (e.g. non-response), data on unemployment rates are generally consistent over time. The EU28 aggregate is a weighted average.

Definition The unemployment rate is the share of the unemployed aged 15-64 in the total labour force (the sum of employed and unemployed persons aged 15-64). In accordance with the ILO standards, unemployed persons consist of those persons who report that they are without work during the reference week, that they are available for work and that they have taken active steps to find work during the four weeks preceding the interview.

Comparability Data for the European countries are from the European Union Labour Force Survey. Data for the United States come from the Current Population Survey; those for other countries are taken from their national labour force surveys. Even if unemployment levels can at times be affected by changes

Sources • OECD (2015), International Migration Outlook, OECD Publishing.

Overview Immigrants were hard hit, and almost immediately, by the economic downturn in most OECD countries. This is mainly explained by their greater presence in sectors that have been strongly affected by the crisis (e.g. construction, manufacturing, hotels and restaurants) as well as by their greater likelihood of being in precarious or informal jobs. However, differences exist across OECD countries and between migrant groups. T h e o n g o i n g e c o n o m i c d ow n t u r n h a s s e e n unemployment rates increase, both for foreign- and native-born persons, in most OECD countries. However, immigrants in most European OECD countries were more affected by unemployment than the native-born population. In Spain, Greece and Ireland, immigrant unemployment increased by 25, 25 and 11 percentage points respectively between 2007 and 2014 whereas that of the native-born increased by 15, 15 and 10 percentage points respectively. In 2014, the unemployment rate of immigrants living in Greece or Spain was still above 30%. The unemployment rate was more than twice the level observed for the native-born population in Sweden, Belgium, Switzerland, Austria and Finland.

26

Further information Analytical publications • OECD (2014), Jobs for Immigrants (Vol. 4), Labour Market Integration in Italy, OECD Publishing. • OECD (2014), Matching Economic Migration with Labour Market Needs, OECD Publishing.

Statistical publications • OECD (2015), Connecting with Emigrants, A Global Profile of Diasporas 2015, OECD Publishing. • OECD (2015), OECD Indicators of Immigrant Integration 2015, OECD Publishing.

Methodological publications • Dumont, J.C. and Lemaître G. (2005), “Counting Immigrants and Expatriates in OECD Countries: A New Perspective”, OECD Social, Employment and Migration Working Papers, No. 25. • Lemaître G. (2005), “The Comparability of International Migration Statistics: Problems and Prospects”, OECD Statistic Brief, No. 9.

Online databases • OECD International Migration Statistics.

Websites • International migration policies and data, www.oecd.org/ migration/mig. OECD FACTBOOK 2015-2016 © OECD 2016

POPULATION AND MIGRATION • INTERNATIONAL MIGRATION MIGRATION AND UNEMPLOYMENT

Unemployment rates of native- and foreign-born population As a percentage of total labour force Women

Men

Native-born

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Foreign-born

Total

Native-born

Foreign-born

Native-born

Foreign-born

2007

2014

2007

2014

2007

2014

2007

2014

2007

2014

2007

2014

4.6 4.1 7.5 .. .. 6.7 3.8 3.9 6.9 8.1 8.0 12.8 7.7 2.2 4.0 8.6 7.6 .. .. 4.4 4.2 3.6 3.8 2.3 10.4 9.9 12.7 5.8 10.5 5.5 3.2 .. 4.5 4.6 7.4 .. .. .. .. .. .. ..

6.1 4.5 6.5 5.9 .. 7.4 6.0 6.7 7.5 8.8 4.2 29.8 7.9 4.5 8.6 .. 13.3 .. .. 4.0 5.0 5.9 6.5 2.5 9.7 14.6 13.7 10.3 24.1 5.9 3.3 12.0 5.5 6.1 9.8 .. .. .. .. .. .. ..

5.5 9.7 17.2 .. .. 10.8 7.8 4.6 17.4 14.5 13.8 14.3 6.1 3.9 5.8 6.8 11.4 .. .. 5.1 10.7 7.7 5.0 4.0 9.2 12.1 5.9 7.8 12.6 12.6 8.8 .. 8.6 4.7 11.4 .. .. .. .. .. .. ..

6.6 9.5 16.3 8.4 .. 8.8 13.9 9.7 17.1 15.7 7.4 35.4 8.3 7.9 12.7 .. 17.4 .. .. 7.3 6.1 11.8 7.5 8.3 14.8 16.7 9.1 15.7 32.6 16.2 8.3 14.7 8.2 6.6 15.2 .. .. .. .. .. .. ..

4.1 3.1 5.6 .. .. 4.2 3.0 5.3 6.5 6.9 7.6 5.3 7.2 2.3 4.6 7.1 4.9 .. .. 3.0 3.6 2.7 3.5 2.3 9.1 7.0 9.9 4.1 6.0 5.1 2.0 .. 5.4 5.1 6.2 .. .. .. .. .. .. ..

6.3 4.8 7.2 7.5 .. 5.2 6.0 7.9 9.1 9.3 4.8 22.6 7.7 5.0 13.0 .. 11.6 .. .. 4.7 5.0 6.3 5.3 3.2 8.6 13.9 12.9 8.9 21.8 6.6 3.4 9.2 6.6 6.8 9.7 .. .. .. .. .. .. ..

4.3 8.4 15.8 .. .. 7.7 8.6 7.1 12.0 11.9 15.2 4.9 2.6 2.1 6.0 6.3 5.3 .. .. 4.3 4.1 7.5 3.5 6.1 9.5 7.3 7.7 4.0 8.3 11.7 5.8 .. 6.9 4.1 8.6 .. .. .. .. .. .. ..

5.6 10.8 18.7 7.4 .. 5.7 10.8 8.8 16.5 16.4 8.3 33.8 4.0 7.3 14.2 .. 15.6 .. .. 7.1 7.2 12.2 5.2 7.6 9.8 17.2 6.0 11.1 34.0 16.6 7.1 10.5 6.1 5.1 14.6 .. .. .. .. .. .. ..

4.3 3.5 6.4 .. .. 5.3 3.4 4.6 6.7 7.4 7.8 8.4 7.5 2.2 4.3 7.8 6.0 .. .. 3.6 3.8 3.1 3.6 2.3 9.7 8.4 11.2 4.9 7.9 5.3 2.6 .. 5.0 4.9 6.8 .. .. .. .. .. .. ..

6.2 4.7 6.9 6.7 .. 6.2 6.0 7.3 8.3 9.1 4.5 25.8 7.8 4.7 11.0 .. 12.3 .. .. 4.4 5.0 6.1 5.9 2.9 9.1 14.2 13.3 9.6 22.8 6.2 3.3 10.0 6.1 6.5 9.8 .. .. .. .. .. .. ..

4.9 9.0 16.4 .. .. 9.1 8.2 5.7 14.5 13.1 14.6 8.7 4.3 3.0 5.9 6.5 7.9 .. .. 4.6 6.2 7.6 4.2 5.1 9.4 9.6 6.8 5.7 10.3 12.1 7.1 .. 7.6 4.4 9.9 .. .. .. .. .. .. ..

6.1 10.1 17.6 7.9 .. 7.0 12.3 9.3 16.8 16.0 7.9 34.5 6.0 7.6 13.5 .. 16.4 .. .. 7.2 6.8 12.0 6.3 7.9 12.1 16.9 7.4 13.0 33.3 16.4 7.7 12.0 7.1 5.8 14.9 .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336406

Gap in unemployment rates between foreign- and native-born populations Percentage points, 2014 12 10

Foreign-born have higher unemployment rates than native-born.

8 6 4 2 0 -2 -4

Foreign-born have lower unemployment rates than native-born.

-6 -8

1 2 http://dx.doi.org/10.1787/888933335247

OECD FACTBOOK 2015-2016 © OECD 2016

27

PRODUCTION PRODUCTION AND PRODUCTIVITY SIZE OF GDP EVOLUTION OF GDP GDP BY METROPOLITAN AREA INVESTMENT RATES LABOUR PRODUCTIVITY LEVELS

ECONOMIC STRUCTURE VALUE ADDED BY ACTIVITY REAL VALUE ADDED BY ACTIVITY SMALL AND MEDIUM-SIZED ENTERPRISES

PRODUCTION • PRODUCTION AND PRODUCTIVITY

SIZE OF GDP Production and Productivity

Gross Domestic Product (GDP) is the standard measure of the value of final goods and services produced by a country during a period minus the value of imports. While GDP is the single most important indicator to capture economic activity, it should not be looked upon as an allencompassing measure for societies’ well-being, as it does not include several aspects of people’s material living standards let alone other aspects of people’s quality of life. GDP per capita is a core indicator of economic performance and commonly used as a broad measure of average living standard despite some recognised shortcomings.

Definition What does gross domestic product mean? “Gross” signifies that no deduction has been made for the depreciation of machinery, buildings and other capital products used in production. “Domestic” means that it relates to the output produced on the economic territory of the country. The products refer to final goods and services, that is, those that are purchased, imputed or otherwise, as: the final consumption of households, non-profit institutions serving households and government; gross capital formation; and exports (minus imports).

according to the 1993 SNA. When changes in international standards are implemented, countries often take the opportunity to implement improved compilation methods; therefore also implementing various improvements in sources and estimation methodologies. In some countries the impact of the ‘statistical benchmark revision’ could be higher than the impact of the changeover in standards. As a consequence the GDP level for the OECD total increased by 3.8% in 2010 based on the available countries. For some countries, the latest year has been estimated by the Secretariat. Historical data have also been estimated for those countries that revise their methodologies but only supply revised data for some years. For GDP per capita some care is needed in interpretation, for example Luxembourg and, to a lesser extent, Switzerland, have a relatively large number of frontier workers. Such workers contribute to GDP but are excluded from the population figures.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled

Overview Per capita GDP for the OECD as a whole was USD 38 865 in 2014. Five OECD countries exceed this amount by more than 25 percent – Luxembourg, Norway, Switzerland, the United States and Ireland. Nine OECD countries had a per capita GDP that was between 10 to 25 percent higher than the per capita GDP for the OECD average in 2014: the Netherlands, Austria, Sweden, Germany, Australia, Denmark, Canada, Iceland and Belgium while nine countries had a more than 25 percent lower GDP per capita than the OECD average: Mexico, Turkey, Chile, Poland, Hungary, Greece, Estonia, the Slovak Republic, and Portugal. In the ten year time period between 2004 and 2014, the countries whose GDP per capita relative to the OECD average has increased the most (by more than 1 0 p e rc e n t ag e p o i n t s ) we re L u x e m b o u rg , t h e Slovak Republic, Estonia, Poland, Switzerland, Norway, Chile, and Turkey. On the other hand, the relative position of GDP per capita to the OECD average has deteriorated in 14 countries. The largest decreases were observed in Greece, the United Kingdom, and Italy.

30

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2015), OECD Economic Surveys, OECD Publishing. • OECD (2015), Towards Green Growth, OECD Green Growth Studies, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Methodological publications • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD National Accounts Statistics. • OECD Economic Outlook: Statistics and Projections.

Websites Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods.htm. OECD FACTBOOK 2015-2016 © OECD 2016

PRODUCTION • PRODUCTION AND PRODUCTIVITY SIZE OF GDP

GDP per capita US dollars, current prices and PPPs Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

30 603 31 261 30 776 30 634 10 279 18 311 31 597 11 770 28 421 28 523 28 438 22 719 14 918 31 972 34 441 25 138 27 890 27 251 20 785 59 353 10 319 33 954 23 209 37 726 11 592 19 332 13 133 20 123 24 664 30 790 36 134 8 667 30 088 38 122 24 663 26 678 9 326 3 454 .. 5 372 8 029 8 408

32 088 32 212 31 059 32 054 10 760 19 593 31 269 13 193 28 813 28 110 29 365 23 804 15 640 31 751 36 016 23 696 28 422 27 960 21 389 60 831 10 808 33 741 23 886 38 991 12 047 19 822 13 889 20 938 25 329 32 062 36 174 8 806 31 184 39 606 25 302 27 484 9 523 3 853 .. 5 663 9 254 8 737

33 699 33 820 31 997 33 654 11 704 20 970 33 162 14 628 31 092 29 056 30 709 25 432 16 466 34 897 38 183 25 124 28 712 29 384 22 968 65 407 11 438 35 424 25 005 43 202 13 054 20 303 14 965 22 693 26 484 34 269 37 523 10 168 33 112 41 857 26 519 28 972 10 183 4 333 2 722 6 026 10 231 9 277

35 440 34 702 33 057 36 051 12 690 22 237 34 083 16 510 32 065 30 398 32 186 25 396 17 314 35 987 40 446 24 774 29 554 30 446 24 220 67 003 12 342 37 313 25 666 48 370 13 808 22 073 16 482 23 884 27 863 34 332 38 916 11 394 34 616 44 237 27 727 30 479 10 737 4 948 3 022 6 483 11 822 9 946

37 583 37 653 35 110 37 822 15 496 24 350 37 192 19 255 34 523 32 311 34 716 28 290 18 664 36 685 44 030 25 634 31 832 31 795 25 863 77 306 13 505 40 854 27 589 54 720 15 157 23 887 18 760 25 873 30 906 37 594 43 140 12 905 36 921 46 369 30 063 32 492 11 434 5 717 3 355 6 959 14 916 10 652

39 343 39 240 36 596 39 226 16 709 26 622 38 685 21 803 37 509 34 064 36 783 29 309 19 339 38 729 46 727 27 499 33 531 33 319 27 872 82 733 14 132 43 673 29 104 56 901 16 894 25 224 21 354 27 670 32 800 40 565 47 175 13 896 37 509 47 987 31 817 34 035 12 365 6 665 3 729 7 499 16 649 11 441

39 704 41 151 37 857 40 108 16 327 26 994 40 843 22 487 39 730 35 170 38 434 31 161 20 811 41 115 43 839 27 358 34 941 33 500 28 718 84 920 14 743 46 156 29 482 62 421 18 051 26 096 23 728 29 589 33 708 41 881 50 226 15 021 37 765 48 330 33 125 34 809 13 160 7 412 3 863 8 003 20 164 11 957

41 138 40 642 37 664 38 709 16 136 26 895 39 625 20 195 37 546 34 837 37 137 30 662 20 867 39 831 41 845 27 589 33 893 31 861 28 393 80 265 14 394 44 413 30 390 56 205 19 145 26 217 23 046 27 488 32 804 39 670 49 722 14 495 36 383 46 930 32 339 33 860 13 114 8 118 4 247 8 167 19 387 11 598

42 253 41 876 39 276 40 055 18 173 26 941 41 812 21 070 38 296 35 896 39 622 28 961 21 562 38 592 43 223 28 948 34 396 33 748 30 465 84 440 15 139 44 752 30 942 58 775 20 612 26 924 24 325 27 586 32 361 41 727 51 121 16 001 35 859 48 302 33 180 35 053 14 179 9 031 .. 8 489 20 498 11 772

43 802 44 039 41 118 41 567 20 189 28 603 43 319 23 914 40 251 37 353 42 152 26 626 22 603 39 558 45 670 30 585 35 494 34 312 31 327 90 889 16 366 46 389 32 221 62 738 22 250 26 932 25 169 28 513 32 535 43 709 54 551 17 692 36 575 49 710 34 493 36 347 15 065 10 017 .. 8 907 22 570 12 292

43 676 44 870 41 595 42 283 21 108 28 636 43 565 25 206 40 209 37 281 42 807 25 177 22 556 40 498 45 757 31 938 35 044 35 601 32 022 91 256 16 808 46 387 32 861 66 358 23 054 27 001 25 809 28 441 32 393 43 869 55 857 18 002 37 605 51 368 34 804 37 135 .. 10 917 .. 9 433 24 069 12 715

44 706 45 133 41 595 43 038 21 888 28 963 43 797 26 160 40 017 37 617 43 282 25 523 23 507 41 987 46 858 32 713 34 781 36 225 33 089 93 234 16 891 46 749 34 989 65 635 23 616 27 651 26 586 28 675 32 546 44 586 56 897 18 599 38 743 52 592 35 271 37 815 .. 11 874 .. 10 023 25 151 13 002

44 971 46 171 42 839 44 057 22 254 30 366 44 889 26 902 39 987 38 870 44 985 25 950 24 709 43 330 48 733 33 243 35 015 36 456 34 356 97 273 17 831 47 635 36 810 64 837 24 430 28 382 27 711 29 969 33 169 45 153 57 246 19 027 39 709 54 353 36 237 38 865 .. .. .. .. .. 13 146

1 2 http://dx.doi.org/10.1787/888933336587

GDP per capita US dollars, current prices and PPPs, 2014 or latest available year 70 000

97 273

60 000 50 000 40 000 30 000 20 000 10 000 0

1 2 http://dx.doi.org/10.1787/888933335492

OECD FACTBOOK 2015-2016 © OECD 2016

31

PRODUCTION • PRODUCTION AND PRODUCTIVITY

EVOLUTION OF GDP Changes in the size of economies are usually measured by changes in the volume (often referred to as real) levels of GDP. Real reflects the fact that changes in GDP due to inflation are removed. This provides a measure of changes in the volume of production of an economy.

Definition

particularly in respect of services produced by government such as health and education. With the exception of Mexico, all OECD countries derive their annual estimates of real GDP using annual chainlinked volume indices (that is the weights are updated every year). Mexico, like many non-OECD countries, revise their weights less frequently.

Converting nominal values of GDP to real values requires a set of detailed price indices, implicitly or directly collected. When applied to the nominal value of transactions, the corresponding volume changes can be captured. The System of National Accounts recommends that weights should be representative of the periods for which growth rates are calculated. This means that new weights should be introduced every year, giving rise to chain-linked (volume) indices.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. It’s important to note that differences between the 2008 SNA and the 1993 SNA did not have a significant impact on the growth rates of real GDP and therefore, the comparability of the indicators presented here are highly comparable across countries. However, there is generally some variability in how countries calculate their volume estimates of GDP,

Overview In 2014, the annual rate of economic growth for the OECD as a whole was 1.8%, an acceleration from the 1.2% growth rate seen in 2013. Several countries after 2 or more years of contraction rebounded in 2014: Slovenia, Greece, Spain, the C z e ch R e p u b l i c , Po r t u g a l , D e n m a r k , a n d t h e Netherlands. Seven countries experienced a growth rate of 3% or higher. The largest economic growth rates were recorded in Ireland (5.2%), Luxembourg (4.1%), Hungary (3.7%), Poland (3.3%), Korea (3.3%), Slovenia (3.0%) and New Zealand (3.0 %). However, in some countries growth rates slowed or turned negative between 2013 and 2014. Chile slowed from 4.2% in 2013 to 1.9% in 2014, Iceland from 3.9% to 1.8%, Japan 1.6% to minus 0.1% and Turkey from 4.2% to 2.9%. Moreover, two other countries experienced negative growth in 2014: Finland (minus 0.4%), Italy (minus 0.4%).

32

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), Economic Policy Reforms, OECD Publishing. • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2015), OECD Journal: Economic Studies, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Online databases • OECD National Accounts Statistics. • OECD Economic Outlook: Statistics and Projections.

Websites Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods.htm. OECD FACTBOOK 2015-2016 © OECD 2016

PRODUCTION • PRODUCTION AND PRODUCTIVITY EVOLUTION OF GDP

Real GDP growth Annual growth in percentage Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

3.1 1.7 1.8 2.8 2.7 1.6 0.5 6.1 1.7 1.1 0.0 3.9 4.5 0.5 5.9 -0.1 0.3 0.3 7.4 3.6 0.8 0.1 4.9 1.4 2.0 0.8 4.5 3.8 2.9 2.1 0.1 6.2 2.5 1.8 0.9 1.3 1.7 3.1 9.1 .. 4.5 4.7 3.7

4.2 0.8 0.8 1.9 3.8 3.6 0.4 7.4 2.0 0.8 -0.7 5.8 3.8 2.7 3.8 1.2 0.2 1.7 2.9 1.4 1.4 0.3 4.6 0.9 3.6 -0.9 5.4 2.8 3.2 2.4 0.0 5.3 3.3 2.8 0.7 1.5 2.1 1.2 10.0 .. 4.8 7.3 2.9

3.2 2.7 3.6 3.1 7.0 4.9 2.6 6.3 3.9 2.8 1.2 5.1 4.9 8.2 4.4 5.1 1.6 2.4 4.9 4.4 4.2 2.0 3.8 4.0 5.1 1.8 5.3 4.4 3.2 4.3 2.8 9.4 2.5 3.8 2.3 2.5 3.3 5.7 10.1 .. 5.0 7.2 4.6

3.0 2.1 2.1 3.2 6.2 6.4 2.4 9.4 2.8 1.6 0.7 0.6 4.4 6.0 6.3 4.4 0.9 1.3 3.9 3.2 3.1 2.2 3.4 2.6 3.5 0.8 6.4 4.0 3.7 2.8 3.0 8.4 3.0 3.3 1.7 2.0 2.8 3.1 11.3 9.3 5.7 6.4 5.3

3.8 3.4 2.5 2.6 5.7 6.9 3.8 10.3 4.1 2.4 3.7 5.7 3.8 4.2 6.3 5.8 2.0 1.7 5.2 5.1 5.0 3.5 2.8 2.4 6.2 1.6 8.5 5.7 4.2 4.7 4.0 6.9 2.7 2.7 3.2 3.4 3.1 4.0 12.7 9.3 5.5 8.2 5.6

3.7 3.6 3.4 2.0 5.2 5.5 0.8 7.7 5.2 2.4 3.3 3.3 0.4 9.5 5.5 6.1 1.5 2.2 5.5 8.4 3.2 3.7 3.0 2.9 7.2 2.5 10.8 6.9 3.8 3.4 4.1 4.7 2.6 1.8 3.0 3.1 2.7 6.0 14.2 9.8 6.3 8.5 5.4

1.7 1.5 0.7 1.2 3.3 2.7 -0.7 -5.4 0.7 0.2 1.1 -0.3 0.8 1.5 -2.2 3.1 -1.0 -1.0 2.8 -0.8 1.4 1.7 -1.6 0.4 3.9 0.2 5.7 3.3 1.1 -0.6 2.3 0.7 -0.5 -0.3 0.5 0.5 0.3 5.0 9.6 4.9 6.0 5.2 3.2

2.0 -3.8 -2.3 -2.7 -1.0 -4.8 -5.1 -14.7 -8.3 -2.9 -5.6 -4.3 -6.6 -4.7 -5.6 1.3 -5.5 -5.5 0.7 -5.4 -4.7 -3.8 -0.3 -1.6 2.6 -3.0 -5.5 -7.8 -3.6 -5.2 -2.1 -4.8 -4.2 -2.8 -4.6 -4.4 -3.5 -0.2 9.2 9.1 4.7 -7.8 -1.5

2.3 1.9 2.7 3.4 5.8 2.3 1.6 2.5 3.0 2.0 4.1 -5.5 0.7 -3.6 0.4 5.5 1.7 4.7 6.5 5.7 5.2 1.4 1.4 0.6 3.7 1.9 5.1 1.2 0.0 6.0 3.0 9.2 1.5 2.5 2.0 2.1 3.0 7.6 10.4 .. 6.4 4.5 3.0

3.7 2.8 1.8 3.0 5.8 2.0 1.2 7.6 2.6 2.1 3.7 -9.1 1.8 2.0 2.6 5.0 0.6 -0.5 3.7 2.6 3.9 1.7 2.2 1.0 5.0 -1.8 2.8 0.6 -1.0 2.7 1.8 8.8 2.0 1.6 1.6 1.7 1.9 3.9 9.4 .. 6.2 4.3 3.2

2.5 0.8 0.2 1.9 5.5 -0.9 -0.7 5.2 -1.4 0.2 0.4 -7.3 -1.7 1.2 0.2 2.9 -2.8 1.8 2.3 -0.8 4.0 -1.1 2.2 2.7 1.6 -4.0 1.5 -2.7 -2.6 -0.3 1.1 2.1 1.2 2.2 -0.8 -0.5 1.3 .. 7.8 .. 6.0 3.4 2.2

2.5 0.3 0.0 2.0 4.2 -0.5 -0.5 1.6 -1.1 0.7 0.3 -3.2 1.9 3.9 1.4 3.3 -1.7 1.6 2.9 4.3 1.4 -0.5 2.5 0.7 1.3 -1.1 1.4 -1.1 -1.7 1.2 1.8 4.2 2.2 1.5 -0.3 0.2 1.2 .. 7.7 .. 5.6 1.3 2.2

2.7 0.4 1.3 2.4 1.9 2.0 1.1 2.9 -0.4 0.2 1.6 0.7 3.7 1.8 5.2 2.6 -0.4 -0.1 3.3 4.1 2.1 1.0 3.0 2.2 3.3 0.9 2.5 3.0 1.4 2.3 1.9 2.9 2.9 2.4 0.9 1.4 1.8 .. 7.4 .. 5.0 0.6 1.5

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Real GDP growth Average annual growth in percentage 3-year average at end of period (2012-14) or latest available years

3-year average at beginning of period (2002-04)

12 10 8 6 4 2 0 -2 -4

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33

PRODUCTION • PRODUCTION AND PRODUCTIVITY

GDP BY METROPOLITAN AREA Metropolitan areas are the prime engine of growth. A better understanding how cities function offers a unique opportunity to identify solutions for the problems faced by individual cities.

GDP values in metropolitan areas are estimates based on GDP data at TL3 level except for Australia, Canada, Chile and Mexico were it is TL2. The figures for the United States were provided by the U.S. Bureau of Economic Analysis.

Definition 281 metropolitan areas have been identified across 30 OECD countries. They are defined as the functional urban areas (FUA) with population above 500 000. The functional urban areas are defined as densely populated municipalities (city cores) and adjacent municipalities with high levels of commuting towards the densely populated urban cores (commuting zone). Functional urban areas can extend across administrative boundaries, reflecting the economic geography of where people actually live and work. GDP is the standard measure of the value of the production activity (goods and services) or resident producer units. Values of the GDP in the metropolitan areas are estimated by adjusting the GDP values of small (TL3) regions. GDP per capita is the ratio between GDP and population in a metropolitan area.

Comparability Functional urban areas have not been identified in Iceland, Israel, New Zealand and Turkey. The FUA of Luxembourg does not appear in the figures since it has a population below 500 000 inhabitants.

Overview The aggregate GDP growth of metropolitan areas in the period 2000-13, appeared for a large part due to a small number of large metropolitan areas. Indeed, fourteen metropolitan areas (around 5% of the total) contributed to 40% of the GDP metropolitan growth in the OECD area. Seoul Incheon, Houston and New York recorded the highest contribution to the GDP growth in the OECD area. The role of metropolitan areas for the national GDP growth can be quite different across OECD countries. Metropolitan areas in Norway, Japan and Denmark accounted for more than 75% of the national growth in the period 2000-13. In contrast, in Switzerland and the Netherlands, metropolitan areas accounted for less than 30% of the national growth. Metropolitan areas tend to be wealthier than the rest of the economy. The GDP per capita gap between the metropolitan areas and the rest of the economy in the OECD area was around 37% in 2013. Such a gap is higher in the Americas and in Europe than in Asia. Overall, GDP per capita is on average higher in large metropolitan areas (with population above 1.5 million).

34

Sources • OECD (2013), OECD Regions at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2012), Promoting Growth in All Regions, OECD Publishing. • OECD (2012), Redefining “Urban”: A New Way to Measure Metropolitan Areas, OECD Publishing. • Piacentini, M. et K. Rosina (2012), “Measuring the Environmental Performance of Metropolitan Areas with Geographic Information Sources”, OECD Regional Development Working Papers, No. 2012/05, OECD Publishing.

Online databases • Metropolitan areas.

Websites • Regional Statistics and Indicators, www.oecd.org/gov/ regional-policy/regionalstatisticsandindicators.htm. • Regions at a Glance Interactive, http://rag.oecd.org. OECD FACTBOOK 2015-2016 © OECD 2016

PRODUCTION • PRODUCTION AND PRODUCTIVITY GDP BY METROPOLITAN AREA

Contribution of metropolitan areas to OECD aggregate growth Percentage, 2000-13; contribution (y-axis), aggregate growth (x-axis) 7

Seoul Incheon (KOR)

6

40% of growth driven by 14 metropolitan areas (5.2% of the metropolitan areas) ...

5 Houston (USA) 4

New York (USA)

Tokyo (JPN)

London (GBR)

...60% of growth driven by the remaining (94.8% of the metropolitan areas)

Los Angeles (USA)

3

Paris (FRA) Washington (USA) San Francisco (USA) Santiago (CHL) Dallas (USA) Mexico City (MEX) Perth (AUS) Madrid (ESP)

2

1

0 0

10

20

30

40

50

60

70

80

90

100

1 2 http://dx.doi.org/10.1787/888933335219

Per cent of national GDP growth contributed by the metropolitan areas Percentage, 2000-13 Largest contributor (city)

All metropolitan areas

100 90 80 70 60 50 40 30 20 10 0

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GDP per capita gap between metropolitan areas and the rest of the economy Percentage, 2013 All metropolitan areas

Population between 500 000 and 1.5 mln

Population above 1.5 mln

70 60 50 40 30 20 10 0 -10

Europe (22)

Americas (4)

Asia and Oceania (3)

OECD29

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35

PRODUCTION • PRODUCTION AND PRODUCTIVITY

INVESTMENT RATES Investment, or to be more precise, gross fixed capital formation, is an important determinant of future economic growth and an essential variable in economic analyses, such as analyses of demand and productivity.

Definition Gross fixed capital formation (GFCF) is defined in the national accounts as acquisition less disposals of produced fixed assets. The relevant assets relate to products that are intended for use in the production of other goods and services for a period of more than a year.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. The most important changes between the 1993 SNA and the 2008 SNA was the extension of the scope of assets to be recorded as GFCF. According to the 2008 SNA, expenditures on research and development and military weapons (warships, submarines, military aircraft, tanks, etc.) are now included in GFCF.

Acquisition includes both purchases of assets (new or second-hand) and the construction of assets by producers for their own use. The term produced assets signifies that only those assets that come into existence as a result of a production process recognised in the national accounts are included. The national accounts also record transactions in nonproduced assets such as land, oil and mineral reserves for example; which are recorded as (acquisitions less disposals of) non-produced assets in the capital account and the balance sheet. Acquisition prices of capital goods include transport and installation charges, as well as all specific taxes associated with purchase.

Overview Investment grew on average by 1.8% over the period 2012-14 for the OECD as a whole, reflecting an overall improvement since the financial crisis. While the majority of the OECD countries experienced positive growth rates, ten countries recorded negative growth in 2014: Australia, Austria, Chile, Estonia, Finland, France, Greece, Israel, Italy, and Turkey. Although Greece recorded a negative average growth rate of 12.3% for the period 2012-14, the decrease was by less than 3% in 2014 improving by 6.6 percentage points compared to 2013. The growth rate of investment, on the other hand, fell by 8.2 percentage points from 2.1% in 2013 in Chile to minus 6.1% in 2014. Belgium, Hungary, Iceland, Ireland, Luxembourg N ew Z e a l a n d , Po l a n d , S w e d e n , a n d t h e United Kingdom a ll re corded growth ra tes of investment larger than 5%. In Hungary, Iceland, and Ireland investment grew by more than 10% in 2014, which is particularly notable for the latter two countries because investment growth rates were negative in 2013.

36

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing. • For Brazil: National sources.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2015), OECD Investment Policy Reviews, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Methodological publications • Ahmad, N. (2004), “Towards More Harmonised Estimates of Investment in Software”, OECD Economic Studies, No. 37, 2003/2. • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Websites Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods.htm. OECD FACTBOOK 2015-2016 © OECD 2016

PRODUCTION • PRODUCTION AND PRODUCTIVITY INVESTMENT RATES

Gross fixed capital formation Annual growth in percentage Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

12.6 -2.9 -4.3 1.0 2.2 2.2 -0.7 23.9 -3.0 -0.9 -5.8 -0.3 7.8 -12.8 5.6 -5.4 4.2 -4.9 6.9 0.2 -0.6 -4.5 7.9 -0.3 -6.1 -3.4 0.0 0.5 4.6 -2.3 0.2 14.7 2.8 -1.8 -1.2 -0.6 -0.6 -1.5 .. .. 4.7 3.1 3.5

8.5 3.8 -0.4 5.2 6.5 1.8 0.0 17.8 2.8 1.9 -1.3 15.1 1.3 9.8 7.9 -5.3 -0.3 0.2 4.8 4.4 0.4 -1.6 14.2 0.4 1.2 -7.3 -3.2 5.8 7.0 2.5 -1.0 14.2 2.3 3.9 1.3 1.7 2.8 -3.9 .. .. 0.6 13.9 10.2

6.3 0.9 8.9 8.4 11.3 3.9 4.2 5.5 4.7 3.5 0.0 3.0 7.6 26.7 9.8 2.0 2.1 0.4 2.9 6.4 7.5 0.2 8.1 10.0 6.7 0.1 4.7 5.4 5.1 5.8 5.1 28.4 2.8 5.8 2.7 3.1 4.5 8.4 .. .. 14.7 12.0 12.9

9.3 0.2 6.1 9.2 23.5 6.4 4.8 15.3 3.2 2.9 0.7 -11.9 3.6 32.0 16.7 3.2 1.7 0.8 2.0 -3.3 5.9 3.1 5.7 12.0 8.7 0.1 16.5 3.5 7.5 5.1 3.2 17.4 3.4 5.6 2.8 3.0 4.6 2.3 .. 16.2 10.9 10.2 11.0

5.1 1.1 2.0 6.3 4.3 5.9 15.1 22.9 1.3 3.6 7.5 19.4 0.7 23.4 7.5 6.5 3.2 1.5 3.6 4.7 8.7 7.2 -2.0 9.1 13.3 -0.8 9.1 10.2 7.4 9.3 4.7 13.3 3.0 2.2 5.5 5.8 4.1 6.1 .. 13.8 2.6 17.9 12.1

9.5 4.6 6.8 3.2 10.8 13.5 0.7 10.3 10.0 5.5 4.1 15.9 4.2 -11.2 -0.2 10.1 1.6 0.3 5.0 14.9 6.0 6.5 7.8 11.7 19.2 3.1 8.9 12.0 4.4 8.1 4.9 3.1 5.7 -1.2 4.9 5.8 2.6 12.0 .. 16.2 9.3 21.1 13.8

2.1 1.4 1.9 1.6 17.9 2.5 -3.3 -13.1 0.3 0.9 1.5 -7.2 1.0 -19.0 -11.5 5.1 -3.1 -4.1 -0.9 7.3 5.0 4.1 -7.4 0.9 8.4 0.4 1.6 7.0 -3.9 0.6 0.7 -6.2 -5.9 -4.8 -0.6 -0.5 -2.2 12.7 .. 1.5 11.9 9.7 12.8

2.1 -7.3 -6.6 -11.5 -12.1 -10.1 -14.3 -36.7 -12.5 -9.1 -10.1 -13.9 -8.3 -47.8 -16.9 -2.9 -9.9 -10.6 0.3 -13.2 -9.3 -9.2 -9.3 -6.8 -1.9 -7.6 -18.7 -22.0 -16.9 -13.4 -7.5 -19.0 -14.4 -13.1 -11.3 -12.0 -10.9 -1.9 .. 7.3 3.9 -14.7 -6.7

3.8 -2.1 -0.8 11.5 11.6 1.3 -4.0 -2.6 1.1 2.1 5.4 -19.3 -9.5 -8.6 -15.5 10.0 -0.5 -0.2 5.5 0.0 1.3 -6.5 3.3 -6.6 -0.4 -0.9 7.2 -13.3 -4.9 6.0 4.4 30.5 5.0 1.1 -0.4 0.2 2.0 17.8 .. .. 6.7 6.4 -3.9

11.5 6.7 4.2 4.8 15.0 1.1 0.3 34.4 4.1 2.1 7.2 -20.5 -1.3 11.6 3.2 14.6 -1.9 1.4 0.8 17.2 7.8 5.6 5.5 7.4 8.8 -12.5 12.7 -4.9 -6.9 5.7 4.3 18.0 2.0 3.7 1.6 2.0 3.6 6.6 .. .. 8.9 9.2 5.7

2.0 1.3 0.2 4.8 11.6 -3.2 0.6 6.7 -2.2 0.2 -0.4 -23.5 -4.4 5.3 8.6 3.6 -9.3 3.4 -0.5 -0.3 4.8 -6.3 7.2 7.6 -1.8 -16.6 -9.2 -8.8 -7.1 -0.2 2.9 -2.7 1.5 6.3 -3.6 -2.8 1.8 .. .. .. 9.1 7.0 3.6

-1.5 -0.3 -1.7 0.4 2.1 -2.7 0.9 3.2 -5.2 -0.6 -1.3 -9.4 7.3 -1.0 -6.6 3.6 -6.6 3.2 3.3 -7.2 -1.6 -4.4 10.4 6.8 -1.1 -5.1 -1.1 1.7 -2.5 0.6 1.2 4.4 2.6 2.4 -2.6 -1.6 0.8 .. .. .. 5.3 0.6 7.6

-2.0 -0.2 7.0 0.2 -6.1 2.0 4.0 -3.1 -3.3 -1.2 3.5 -2.8 11.2 15.4 14.3 -2.0 -3.5 2.6 3.1 9.9 2.3 3.5 8.8 0.6 9.8 2.8 3.5 3.2 3.5 7.6 2.1 -1.3 7.5 4.1 1.2 2.5 2.8 .. .. .. 4.1 -2.1 -0.4

1 2 http://dx.doi.org/10.1787/888933336335

Gross fixed capital formation Average annual growth in percentage 3-year average at end of period (2012-14)

3-year average at beginning of period (2002-04)

24 20 16 12 8 4 0 -4 -8 -12 -16

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37

PRODUCTION • PRODUCTION AND PRODUCTIVITY

LABOUR PRODUCTIVITY LEVELS Productivity is a measure of the efficiency with which available resources are used in production. Labour productivity, together with use of labour resources, is one of the main determinants of living standards.

capita levels with respect to the United States can be decomposed into differences in labour productivity levels and differences in the extent of labour utilisation, measured as the number of hours worked per capita.

Definition

Comparability

Labour productivity is measured as GDP per hour worked. GDP data at current prices are from the OECD Annual National Accounts. For international comparisons and to obtain a volume or “real” measure of GDP, data are converted to a common currency using the OECD Purchasing Power Parities (PPPs) for the year 2014. Hours worked data are derived from two sources, the OECD Annual National Accounts and the OECD Employment Outlook.

Cross-country comparisons of productivity and income levels require comparable data on output. Currently, OECD countries use the 2008 System of National Accounts, except Chile, Japan and Turkey for which data are based on the 1993 SNA. Comparable labour input estimates are also required. In many cases, employment data are derived from labour force surveys and may not be fully consistent with national account concepts. This reduces the comparability of labour utilisation across countries. Hours worked data are derived either from national labour force surveys or from business surveys. Several OECD countries estimate hours worked by combining these sources, or integrate these sources in a system of labour accounts which is comparable to the national accounts. Crosscountry comparability of hours worked remains limited, generating a margin of uncertainty in productivity levels estimates.

Labour productivity and income levels in each country are calculated with respect to the labour productivity and income levels of the United States. Differences in GDP per

Overview In 2014, the top three countries with the highest levels of GDP per hour worked, were Luxembourg, Norway and the United States. In Luxembourg, the level of labour productivity was roughly five times that observed in Mexico. Despite low labour productivity levels, Mexico and Chile recorded the highest average working time (well above 2 000 hours annually for the former) among other OECD countries. In the same year, differences in per capita GDP with respect to the United States varied widely across countries. Much of the differences observed in GDP per capita reflect differences in labour productivity, with gaps relative to the United States ranging from minus 68 percentage points in Mexico, to plus 19 and 80 percentage points in Norway and Luxembourg, respectively. In 2014, Norway and Luxembourg were, once again, the only OECD countries to maintain substantial positive gaps in GDP per capita and in GDP per hour worked vis-à-vis the United States. Cross-country differences in labour utilisation reflect high unemployment and low participation rates of the working age population, on the one hand, and lower working hours among employed people, on the other hand. Relative to the United States, gaps in labour utilisation were significantly smaller than gaps in GDP per capita and per hour worked. In 2014, the gap in labour utilisation vis-à-vis the United States worsened in several countries and remained substantially negative in Belgium, France, South Africa, Spain and Turkey. In the same year, Iceland, Korea, Luxembourg, Switzerland and Russia showed a relatively positive gap in labour utilisation, therefore contributing to narrow their gap with the United States in GDP per capita.

Sources • OECD (2015), OECD National Accounts Statistics (Database). • OECD (2015), OECD Productivity Statistics (Database).

Further information Analytical publications • OECD (2011), OECD Reviews of Labour Market and Social Policies, OECD Publishing.

Statistical publications • OECD (2015), OECD Compendium of Productivity Indicators, OECD Publishing.

Methodological publications. • OECD (2001), Measuring Productivity – OECD Manual: Measurement of Aggregate and Industry-level Productivity Growth, OECD Publishing.

Websites • Productivity statistics, www.oecd.org/statistics/productivity.

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PRODUCTION • PRODUCTION AND PRODUCTIVITY LABOUR PRODUCTIVITY LEVELS

GDP per hour worked US dollars, current prices and PPPs, 2014 100 90 80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933335394

Levels of GDP per capita and labour productivity Percentage point differences with respect to the United States, 2014

ZAF MEX TUR CHL HUN POL GRC RUS EST SVK PRT SVN CZE ISR ESP KOR ITA EU28 NZL JPN EA19 FRA OECD GBR FIN BEL ISL CAN AUS DNK DEU SWE AUT NLD IRL CHE NOR LUX - 80

Percentage gap with respect to US GDP per capita

Percentage gap with respect to US GDP per hour worked

Effect of labour utilisation

ZAF MEX TUR CHL HUN POL GRC RUS EST SVK PRT SVN CZE ISR ESP KOR ITA EU28 NZL JPN EA19 FRA OECD GBR FIN BEL ISL CAN AUS DNK DEU SWE AUT NLD IRL CHE NOR LUX

80

- 60

- 40

- 20

0

20

40

- 80

- 60

- 40

- 20

0

20

40

- 80

- 60

- 40

- 20

0

20

40

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39

PRODUCTION • ECONOMIC STRUCTURE

VALUE ADDED BY ACTIVITY Economic structure

Value added reflects the contribution of labour and capital to production. The sum of value added in the economy equals GDP, so value added is also a measure of output and frequently used in productivity and structural analysis. One of the major advantages of value added is that it avoids problems inherent in the measurement of gross output – gross in the sense that it counts the output of all production units including those that produce intermediate inputs for other units. Countries with fragmented production networks therefore will have, all other things equal, higher output than those with more consolidated networks, complicating international comparisons. This is also a temporal problem as production networks can become more or less consolidated (through outsourcing for example) within a country from one year to another.

Definition Value added at basic prices can be simply defined as the difference between gross output (at basic prices) and intermediate consumption (at purchasers’ prices) and can be decomposed into the following components:

Overview The importance of each activity varies across OECD countries with the most important sector groupings being industry; distributive trade, repairs, transport, accommodation and food services; and public administration, defence, education, and human health and social work activities. The share of industry in total value added has trended downward in recent decades. However, looking at changes in the share between 2002 and the most recent year, eight countries show an increase; most notably in Korea, the Czech Republic, and Hungary. The share of industry also fell in non-member countries but remains at considerably higher levels than in most OECD countries, with the share for China and Indonesia remaining at over 30%. Norway, where mining and quarrying are large contributors to activity, Korea with consumer electronics, automotive, steel industries and shipbuilding, the Czech Republic with a strong automotive and energy sector come closest to these rates within the OECD. As regards the share of financial and insurance activities, many OECD countries have regained or exceeded their 2002 levels, among them Luxembourg at 26.3%, representing the largest share of value added. The share of agriculture in total value added within the OECD is generally small. In only five countries (Turkey, I c e l a n d , N ew Z e a l a n d , H u n g a r y a n d t h e Slovak Republic) does agriculture account for more than 4% of total value added.

compensation of employees; gross operating surplus; mixed income; and other taxes on production less subsidies on production. The System of National Accounts recommends the basic price valuation for value added but it can also be measured on different price bases such as producers’ prices and at factor cost.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. It’s important to note however that differences between the 2008 SNA and the 1993 SNA do not have a significant impact on comparability implying that data are highly comparable across countries. However, not all countries produce value added on the basis of basic prices. Japan uses approximately market prices. New Zealand uses producer prices, and Iceland and the United States use factor costs. Activity is based on the International Standard Industrial Classification of All Economic Activities (ISIC Rev.4) system except for Indonesia which is based on ISIC Rev.3. Countries generally collect information using their own industrial classification systems. The conversion from a national classification system to ISIC may create some comparability issues. That said, for most countries the activities presented here are generally comparable.

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information Analytical publications • OECD (2002), Measuring the Non-Observed Economy: A Handbook, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Online databases • STAN: OECD Structural Analysis Statistics.

Websites • OECD National Accounts, www.oecd.org/std/na.

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PRODUCTION • ECONOMIC STRUCTURE VALUE ADDED BY ACTIVITY

Value added by activity As a percentage of total value added, 2014 or latest available year Agriculture, hunting, forestry, fishing Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2.5 1.4 0.7 .. 3.3 2.7 1.4 3.4 2.8 1.7 0.7 3.8 4.5 6.9 1.6 1.3 2.2 1.2 2.3 0.3 3.3 1.8 6.9 1.7 2.9 2.3 4.4 2.2 2.5 1.4 0.8 8.0 0.7 1.4 1.6 1.6 .. 5.1 10.0 .. 13.7 .. ..

Industry including energy 18.6 21.7 16.5 .. 27.2 32.4 18.0 21.6 20.3 13.8 25.7 12.8 26.8 18.8 22.7 16.8 18.6 20.4 33.3 6.1 27.1 16.7 17.6 32.4 25.0 17.1 25.3 27.4 17.0 20.0 20.9 22.0 14.7 16.6 19.4 18.9 .. 20.9 37.0 .. 32.8 .. ..

Construction

Distributive trade, repairs, transport, accommodation and food services

Information and communication

Finance and insurance

Real estate

8.4 6.4 5.7 .. 7.9 5.6 4.4 6.5 6.2 5.7 4.6 2.9 4.4 4.9 2.9 5.6 4.9 5.9 4.9 5.8 7.4 4.5 5.8 5.8 7.4 4.5 8.4 5.7 5.4 6.0 5.3 5.1 6.2 3.9 5.0 5.4 .. 6.3 6.9 .. 10.1 .. ..

16.5 22.9 19.8 .. 15.3 18.0 19.5 22.7 16.2 17.7 15.5 24.9 18.2 17.9 15.8 13.1 20.2 19.4 14.9 17.3 25.1 20.2 17.1 14.1 26.0 24.7 22.1 20.2 24.1 17.0 20.2 29.8 18.2 15.7 18.9 19.0 .. 19.5 16.6 .. 21.3 .. ..

3.0 3.3 4.1 .. 2.0 4.9 4.3 5.3 5.5 4.9 4.9 3.2 5.2 4.9 11.7 8.5 3.7 5.6 3.8 6.3 2.4 4.7 3.2 3.8 3.9 3.4 4.4 4.1 4.3 5.6 4.1 2.1 6.2 6.1 4.6 4.9 .. 3.7 .. .. 3.6 .. ..

9.0 4.6 6.2 .. 5.6 4.5 6.2 3.8 3.0 4.5 4.1 4.6 3.7 7.4 8.9 5.8 5.9 4.5 5.6 26.3 3.7 7.8 5.9 5.1 4.4 5.2 4.2 4.0 4.1 4.6 9.8 3.4 8.2 7.4 5.0 5.5 .. 6.3 5.9 .. 4.0 .. ..

12.1 9.9 8.6 .. .. 8.3 10.2 10.1 12.3 12.9 11.1 17.8 7.9 9.4 7.6 14.9 14.1 11.8 8.0 8.0 11.4 5.7 13.5 6.7 5.2 12.8 6.7 6.9 12.0 8.5 1.0 11.0 11.2 11.4 11.6 11.2 .. 8.4 5.9 .. 2.9 .. ..

Professional, Public administration, scientific, technical, defence, education administration and human health and support services social work 9.8 9.5 13.6 .. 15.3 6.7 9.0 9.2 8.4 12.8 11.1 5.2 9.0 7.4 10.2 12.3 9.2 .. 7.4 11.9 6.4 13.6 9.9 7.4 7.7 6.9 7.4 9.8 7.4 9.5 9.9 6.2 12.2 11.7 10.6 10.7 .. 7.6 .. .. 1.6 .. ..

Other services

17.4 17.4 22.6 .. 14.8 14.8 23.3 14.8 22.1 23.2 18.2 20.6 17.4 19.5 16.3 18.5 17.3 11.4 17.0 15.9 11.0 22.2 16.3 21.1 14.9 20.2 13.6 17.0 18.8 24.4 19.0 10.7 18.1 22.6 19.6 19.3 .. 16.1 .. .. 8.4 .. ..

2.7 2.9 2.2 .. 8.6 2.2 3.6 2.6 3.1 3.0 4.1 4.2 3.0 3.0 2.3 3.1 4.0 19.9 2.8 2.0 2.1 2.7 3.7 1.9 2.4 2.9 3.6 2.7 4.3 3.0 8.9 1.7 4.3 3.2 5.0 5.5 .. 6.0 17.7 .. 1.6 .. ..

1 2 http://dx.doi.org/10.1787/888933336760

Value added in industry, including energy As a percentage of total value added 2014 or latest available year

2002

45 40 35 30 25 20 15 10 5 0

1 2 http://dx.doi.org/10.1787/888933335692

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PRODUCTION • ECONOMIC STRUCTURE

REAL VALUE ADDED BY ACTIVITY Like its nominal counterpart, real value added can be derived as the difference between real output and real intermediate consumption, an approach known as doubledeflation. One of the major advantages of value added is that it avoids problems inherent in the measurement of gross output – gross in the sense that it counts the output of all production units including those that produce intermediate inputs for other units. Countries with fragmented production networks therefore will have, all other things equal, higher output than those with more consolidated networks, complicating international comparisons. Production networks have become increasingly globalised in recent years, further affecting temporal and cross-country comparability. Value added avoids these problems by measuring the value that a resident unit adds to that of the units that supply its inputs.

Definition Growth rates refer to volume estimates of gross value added. Value added at basic prices can be simply defined as the difference between gross output (at basic prices) and intermediate consumption (at purchasers’ prices) and can be decomposed into the following components:

Overview OECD countries have returned to positive growth rates of real value added for agriculture. Strategies such as “Food Harvest 2020” in Ireland have begun to show their results with 21.3% annual growth in real value added. The growth rate in real value added for agriculture in Spain on the other hand fell by minus 3.7%.

compensation of employees; gross operating surplus; mixed income; and other taxes on production less subsidies on production. The System of National Accounts recommends the basic price valuation for value added but it can also be measured on different price bases such as producers’ prices and at factor cost.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. It’s important to note however that differences between 2008 SNA and the 1993 SNA do not have a significant impact on comparability implying that data are highly comparable across countries. However, not all countries produce value added on the basis of basic prices. Japan uses approximately market prices. New Zealand uses producer prices, and Iceland and the United States use factor costs. Activity is based on the International Standard Industrial Classification of All Economic Activities (ISIC Rev.4) system except for Indonesia which is based on ISIC Rev.3. Countries generally collect information using their own industrial classification systems. The conversion from a national classification system to ISIC may create some comparability issues. That said, for most countries the activities presented here are generally comparable.

In the industry sector, declines in the growth rate greater than 10% were recorded only in Greece (minus 10.2%), while in Ireland growth was strong, 6.8% in 2014 rebounding from minus 0.4% in 2004. Ten OECD countries registered negative growth rates in the construction sector: Austria, Estonia, Finland, France, Greece, Israel, Italy, Mexico, Portugal, and Spain; whereas the construction sector in Hungary and Sweden increased by more than 12%. In Slovenia real value added by the real estate sector fell by 25.6% in contrast to a 9.5% increase in Ireland. The growth rate of real value added for the information and communication sector was positive in most OECD countries except Austria, Greece, Italy, Luxembourg and Portugal. Finland, Mexico, Poland and the Slovak Republic showed strong increases in their real value added for financial and insurance activities with 11.6%, 9.1%, 9.4% and 10.7% annual growth rates, respectively.

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Methodological publications • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • STAN: OECD Structural Analysis Statistics.

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PRODUCTION • ECONOMIC STRUCTURE REAL VALUE ADDED BY ACTIVITY

Real value added by activity Annual growth in percentage, 2014 or latest available year Agriculture, hunting, forestry, fishing Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2.1 4.1 1.8 0.7 2.3 5.9 11.8 5.1 -0.2 8.5 7.5 10.9 13.9 3.3 21.3 -3.5 -1.7 2.7 2.6 13.5 2.6 3.4 -3.0 6.1 1.1 1.2 18.1 10.0 -3.7 2.9 7.6 -1.9 13.1 12.1 3.4 3.8 0.8 5.6 4.5 .. 4.2 .. ..

Industry, including energy

Construction

3.2 1.3 1.7 0.9 1.0 4.7 -0.1 4.4 -0.3 -0.9 1.6 -10.2 6.7 3.7 6.8 1.9 -1.2 0.3 3.8 -0.1 0.7 -2.1 1.2 2.3 4.9 0.8 8.1 4.8 1.2 -0.5 1.9 3.8 1.0 1.8 0.5 0.9 1.9 2.9 7.7 .. 3.5 .. ..

3.9 -2.0 3.3 5.2 1.5 3.4 3.4 -4.2 -3.7 -3.6 2.6 -4.9 12.3 8.2 7.6 -2.9 -3.3 3.7 0.6 7.9 -4.9 3.2 10.9 4.4 5.0 -1.4 7.9 9.5 -2.1 12.1 2.1 2.2 7.7 1.9 -0.9 1.6 0.4 8.3 9.3 .. 7.0 .. ..

Distributive trade, repairs, transport, accommodation and food services

Information and communication

-0.2 -0.4 0.0 2.0 1.1 1.5 0.8 2.1 -1.2 0.2 1.3 7.2 3.6 5.5 3.0 1.0 0.4 0.6 2.5 5.3 2.3 2.5 2.5 2.1 0.5 2.3 7.1 3.5 3.2 3.3 1.5 2.1 4.6 1.3 1.3 1.9 2.5 -9.1 9.0 .. 5.6 .. ..

2.4 -2.7 1.3 1.6 6.6 5.9 8.5 3.8 5.1 1.2 2.4 -4.5 1.4 6.9 8.9 9.0 -1.7 4.3 3.1 -5.3 4.8 4.4 0.9 4.3 4.3 -1.4 0.2 1.4 4.7 4.2 1.4 3.4 0.6 4.0 2.0 2.0 2.9 6.5 .. .. 10.0 .. ..

Finance and insurance 5.3 -1.5 3.8 2.4 3.0 -0.5 1.1 4.7 11.6 -0.8 0.6 -4.4 -2.9 -1.0 5.2 -5.0 -0.1 4.5 5.7 2.1 9.1 -3.0 4.4 3.7 9.4 -6.4 10.7 -1.2 -1.0 1.8 1.8 7.0 -0.9 4.6 -0.4 -0.5 1.0 5.3 10.0 .. 4.9 .. ..

Real estate

3.6 2.8 1.2 2.6 .. -0.3 -2.2 -2.3 0.6 1.0 1.0 1.6 -0.4 1.6 9.5 4.1 1.5 0.2 1.8 7.6 0.9 3.9 1.2 1.0 5.4 0.3 -25.6 1.4 1.2 0.8 1.9 2.6 2.4 1.4 1.3 1.3 .. 1.8 4.1 .. 5.0 .. ..

Professional, Public administration, scientific, technical, defence, education administration and human health and support services social work -0.2 1.2 1.9 1.8 1.9 4.9 4.6 6.1 -1.7 0.7 2.4 -2.3 5.8 5.8 5.4 7.3 -2.3 .. 4.1 8.6 2.9 3.3 3.4 0.6 5.4 3.5 -2.7 7.7 3.4 3.6 2.4 8.5 7.1 2.0 1.5 2.7 .. 5.7 .. .. 9.8 .. ..

Other services

4.1 -0.2 0.9 1.1 4.3 0.3 0.0 0.3 -1.5 1.0 1.0 -0.4 -2.1 0.7 0.1 0.7 0.1 -0.4 3.1 2.5 0.8 0.1 2.7 1.7 1.3 0.1 -5.7 1.0 -0.4 1.4 2.8 4.6 0.0 0.6 0.6 0.6 0.9 1.2 .. .. 4.8 .. ..

2.2 0.4 0.2 0.5 1.7 0.9 1.7 0.8 -1.2 0.4 0.1 1.1 4.3 2.8 7.7 4.4 0.3 2.0 2.8 2.6 2.0 0.6 2.2 3.4 5.4 3.0 3.2 1.6 4.4 2.3 0.8 2.9 5.4 1.5 0.6 1.5 0.8 2.2 7.9 .. 8.9 .. ..

1 2 http://dx.doi.org/10.1787/888933336116

Real value added in industry, including energy Annual growth in percentage 2014 or latest available year

2004

20 15 10 5 0 -5 -10 -15

1 2 http://dx.doi.org/10.1787/888933334934

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PRODUCTION • ECONOMIC STRUCTURE

SMALL AND MEDIUM-SIZED ENTERPRISES Small firms, and especially start-ups in specialised sectors, can be very dynamic and innovative. A few very highperformance firms can make an important contribution to employment creation and economic growth. Although the majority of small firms have modest economic impacts individually, taken together they make an important economic and social contribution.

Definition An enterprise is an entity possessing the right to conduct business on its own; for example to enter into contracts, own property, incur liabilities and establish bank accounts. It may consist of one or more establishments situated in a geographically separate area.

provisions, for instance to reduce administrative burdens (including respondent burdens) on very small enterprises. The size-class breakdown 1-9, 10-19, 20-49, 50-249, 250+ provides for the best comparability given the varying data collection practices across countries. Some countries use different conventions: the size class “1-9” refers to “1-19” for Australia and Turkey; the size class “20-49” refers to “20-199” for Australia; the size class “50-249” refers to “50-299” for Japan; and finally, the size class “250+” refers to “200+” for Australia and “300+” for Japan. For Israel, Mexico, Turkey and the United States data refer to employees. Data refer to 2009 for Mexico, 2010 for Australia and 2013 for Israel.

Employees include all persons covered by a contractual arrangement, working in the enterprise and receiving compensation for their work. Included are persons on sick leave, paid leave or vacation, while excluded are working proprietors, active business partners, unpaid family workers and home-workers. Number of persons employed is defined as the total number of persons who worked in or for the concerned unit. Excluded are directors of incorporated enterprises and members of shareholders’ committees, labour force made available to the concerned unit by other units and charged for, persons carrying out repair and maintenance work in the unit on the behalf of other units, and homeworkers. It also excludes persons on indefinite leave, military leave or those whose only remuneration from the enterprise is by way of a pension.

Comparability An area where differences do arise concerns the coverage of data on enterprises/establishments. Data are typically compiled based on information coming from business registers, economic censuses or business surveys that may have a size or turnover cut-off. Also, countries may apply thresholds depending on tax legislation and legal

Sources • OECD (2015), Structural and Demographic Business Statistics (Database).

Further information

Overview Enterprises with less than ten persons employed (i.e. micro-enterprises) in the manufacturing sector represent, on average, 80% of the total business population, ranging between 70% and 90% in most OECD countries. The share of these micro-enterprises in employment of the manufacturing sector is, however, considerably less. Across countries, the contribution of manufacturing micro-enterprises to employment is around 10 to 15%; there are a few exceptions, notably Greece where micro-enterprises account for 42.2% of employment in manufacturing.

44

Analytical publications • OECD (2015), Financing SMEs and Entrepreneurs, OECD Publishing. • OECD (2015), OECD Studies on SMEs and Entrepreneurship, OECD Publishing.

Statistical publications • OECD (2015), Entrepreneurship at a Glance, OECD Publishing. • OECD (2010), Structural and Demographic Business Statistics 2009, OECD Publishing.

Methodological publications • OECD and Eurostat (2008), Eurostat-OECD Manual on Business Demography Statistics, OECD Publishing. OECD FACTBOOK 2015-2016 © OECD 2016

PRODUCTION • ECONOMIC STRUCTURE SMALL AND MEDIUM-SIZED ENTERPRISES

Number of employees and number of enterprises in manufacturing Breakdown by size-class of enterprise, as a percentage of total, 2012 or latest available year Number of persons employed Less than 10 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

30.2 8.9 11.6 .. .. 15.8 8.3 12.2 10.2 13.7 6.9 42.2 13.0 .. 4.6 8.9 24.6 7.6 .. 6.8 29.4 14.9 12.9 11.0 15.8 20.0 18.4 15.4 20.4 12.0 7.5 22.6 9.7 5.5 13.7 .. 9.3 .. .. .. .. ..

Number of enterprises in manufacturing

10-19

20-49

50-249

.. 6.5 6.3 .. .. 5.3 7.2 8.1 6.6 6.9 8.0 7.1 6.5 .. 5.6 7.3 14.5 6.0 .. .. 4.6 8.4 10.7 8.0 4.9 11.9 4.6 6.6 10.7 6.7 8.7 .. 7.6 4.9 8.3 .. 8.3 .. .. .. .. ..

31.7 10.8 12.9 .. .. 10.0 11.9 15.7 11.1 11.9 7.6 11.6 10.4 .. 11.3 12.2 15.9 10.7 .. .. 6.0 13.9 15.8 14.2 9.4 18.3 8.3 9.1 16.3 10.9 13.8 17.2 13.7 8.7 11.7 .. 12.4 .. .. .. .. ..

.. 26.0 25.1 .. .. 26.6 25.7 39.5 24.0 23.0 24.5 19.8 26.0 .. 31.8 29.8 21.7 23.7 .. .. 14.8 31.7 24.3 27.2 28.6 29.9 22.7 28.2 23.7 22.6 28.9 26.4 27.9 17.7 25.3 .. 20.5 .. .. .. .. ..

250 or more 38.2 47.8 44.1 .. .. 42.4 46.8 24.5 48.2 44.6 53.1 19.3 44.1 .. 46.7 41.7 23.3 52.0 .. 93.2 45.2 31.0 36.3 39.5 41.3 19.9 46.0 40.7 28.9 47.8 41.0 33.9 41.2 63.2 41.0 .. 49.4 .. .. .. .. ..

Less than 10 94.0 71.8 81.9 63.5 .. 92.8 71.4 73.2 81.5 85.8 62.1 94.5 85.0 .. 54.1 81.0 82.7 75.9 .. 61.7 93.9 83.8 68.6 81.9 86.9 82.9 94.1 87.8 83.4 87.7 56.6 92.0 75.6 67.5 82.1 .. 64.9 .. .. .. .. ..

10-19

20-49

50-249

.. 11.8 7.4 15.5 .. 2.7 12.3 9.8 7.8 6.1 20.0 2.6 6.4 .. 16.4 7.9 10.0 10.1 .. 13.0 2.8 6.7 15.3 7.8 4.5 8.2 2.2 5.4 8.2 5.3 18.9 .. 10.6 13.6 8.5 .. 16.8 .. .. .. .. ..

5.5 8.6 6.2 13.1 .. 2.3 9.0 9.1 5.9 4.7 7.8 1.8 4.5 .. 14.5 5.9 4.9 8.1 .. 12.3 1.6 5.2 10.2 6.1 4.2 5.7 1.9 3.3 5.6 3.9 13.4 5.2 7.7 10.7 5.2 .. 11.3 .. .. .. .. ..

.. 5.9 3.6 7.2 .. 1.8 6.0 7.0 3.9 2.7 8.1 0.9 3.3 .. 11.8 4.3 2.1 5.1 .. 10.0 1.2 3.7 4.9 3.6 3.5 2.9 1.4 2.9 2.4 2.5 9.1 2.4 5.0 6.7 3.4 .. 5.8 .. .. .. .. ..

250 or more 0.5 1.9 0.9 0.8 .. 0.4 1.3 1.0 0.9 0.7 2.0 0.2 0.8 .. 3.3 0.8 0.3 0.8 .. 3.0 0.5 0.6 0.9 0.7 0.9 0.4 0.4 0.6 0.4 0.6 2.0 0.5 1.1 1.6 0.8 .. 1.3 .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336596

Manufacturing enterprises with less than ten persons employed: number of persons employed and number of enterprises As a percentage of total number of persons employed or total number of enterprises in manufacturing, 2012 or latest available year Percentage of persons employed

Percentage of enterprises

100 90 80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933335509

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HOUSEHOLD INCOME AND WEALTH INCOME AND SAVINGS NATIONAL INCOME PER CAPITA HOUSEHOLD DISPOSABLE INCOME HOUSEHOLD SAVINGS

INCOME INEQUALITY AND POVERTY INCOME INEQUALITY POVERTY RATES AND GAPS

HOUSEHOLD WEALTH HOUSEHOLD FINANCIAL ASSETS HOUSEHOLD DEBT NON-FINANCIAL ASSETS OF HOUSEHOLDS

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS

NATIONAL INCOME PER CAPITA Income and savings

While per capita gross domestic product is the indicator most commonly used to compare national income levels, two other measures are preferred by many analysts. These are per capita Gross National Income (GNI) and Net National Income (NNI). Whereas GDP refers to the income generated by production activities on the economic territory of the country, GNI measures the income generated by the residents of a country, whether earned in the domestic territory or abroad. NNI is the aggregate value of the balances of net primary incomes summed over all sectors.

Definition GNI is defined as GDP plus receipts from abroad less payments to abroad of wages and salaries and of property income plus net taxes and subsidies receivable from abroad. NNI is equal to GNI net of depreciation. Wages and salaries from abroad are those that are earned by residents who essentially live and consume inside the economic territory but work abroad (this happens in border areas on a regular basis) or for persons that live and work abroad for only short periods (seasonal workers) and whose centre of economic interest remains in their home country. Guest-workers and other migrant workers who live abroad for twelve months or more are considered to be resident in the country where they are working. Such persons may send part of their earnings to relatives at home, but these remittances are treated as transfers between resident and non-resident households and are recorded in national disposable income but not national income. Property income from/to abroad includes interest and dividends. It also includes all or part of the retained earnings of foreign enterprises owned fully or in part by

residents (and vice versa). In this respect, it is important to note that retained earnings of foreign enterprises owned by residents do not actually return to the residents concerned. Nevertheless, the retained earnings are recorded as a receipt.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. When changes in international standards are implemented countries often take the opportunity to implement improved compilation methods; therefore also implementing various improvements in sources and estimation methodologies. In some countries the impact of the ‘statistical benchmark revision’ could be higher than the impact of the changeover in standards. As a consequence the GDP level for the OECD total increased by 3.8% in 2010 based on the available countries. The level changes in NNI are generally more moderate than the changes in the levels of GDP. For the OECD, the impact of the changes on NNI is about 0.5 percentage points on average in 2010. However, there are practical difficulties in the measurement both of international flows of wages and salaries and property income and of depreciation. It is for that reason that GDP per capita is the most widely used indicator of income or welfare, even though, GNI is theoretically superior.

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information

Overview

Analytical publications

On average for the OECD, GNI per capita is around 1525% higher than NNI per capita. The country rankings are not greatly affected by the choice of income measure. Only three countries would be more than one place higher in the ranking if GNI per capita were used i n s t e a d o f N N I : t h e S l ov a k R e p u b l i c , t h e Czech Republic, and Finland. Only four countries would be more than two places lower in the ranking if GNI per capita were used: Russia, Israel, Ireland and the United Kingdom.

• OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2014), Perspectives on Global Development, OECD Publishing. • OECD (2003), The Sources of Economic Growth in OECD Countries, OECD Publishing.

GNI per capita does not differ significantly from GDP per capita. Usually, the differences are smaller than USD 3 000. There are, however, two exceptions. For Luxembourg, GNI per capita in 2014, although still highest in the OECD, is nearly USD 33 000 lower than GDP per capita. In Ireland, GNI is USD 8 000 lower than GDP per capita in 2013.

48

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Methodological publications • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD National Accounts Statistics. • OECD Economic Outlook: Statistics and Projections.

Websites • Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods. OECD FACTBOOK 2015-2016 © OECD 2016

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS NATIONAL INCOME PER CAPITA

Gross national income per capita US dollars, current prices and PPPs Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

29 740 31 109 31 287 29 851 9 879 17 675 31 226 11 218 28 506 28 812 28 097 22 678 14 168 31 940 28 679 24 222 27 761 27 690 20 701 47 715 10 132 34 010 22 041 37 840 11 553 18 994 13 081 20 024 24 390 30 857 37 142 .. 30 595 38 544 22 766 24 488 26 725 .. 3 419 .. .. 7 876 8 205

31 173 32 150 31 631 31 259 10 137 18 942 31 076 12 478 28 643 28 462 29 099 23 699 14 940 31 276 30 824 22 839 28 277 28 423 21 307 47 224 10 611 34 217 22 752 39 230 11 930 19 573 13 196 20 790 25 125 32 601 38 604 .. 31 725 39 884 23 152 25 198 27 521 .. 3 829 .. .. 8 972 8 507

32 446 33 770 32 421 32 923 10 780 20 004 33 307 13 907 31 311 29 479 30 925 25 095 15 597 33 434 32 781 24 390 28 655 29 931 22 921 53 696 11 275 36 051 23 599 43 284 12 635 19 999 14 367 22 458 26 240 34 458 39 908 .. 33 732 42 190 24 143 26 508 29 057 .. 4 321 2 703 .. 10 010 9 102

34 061 34 593 33 445 35 310 11 629 21 231 34 342 15 864 32 199 30 929 32 472 25 397 16 380 34 646 34 920 24 558 29 586 31 156 24 031 56 087 12 124 37 461 24 013 48 900 13 566 21 733 16 023 23 743 27 460 34 796 42 241 .. 35 466 44 669 25 238 27 753 30 625 .. 4 913 3 001 .. 11 527 9 755

35 906 37 755 35 586 37 218 13 657 22 872 37 642 18 255 34 848 32 961 35 314 27 722 17 708 34 524 38 523 25 535 31 942 32 702 25 767 53 473 13 226 41 696 25 735 54 759 14 836 23 128 18 196 25 640 30 367 38 485 46 430 .. 37 355 47 322 27 337 25 337 32 772 .. 5 706 3 329 .. 14 475 10 450

37 736 39 162 37 076 38 647 14 888 24 918 38 882 20 302 37 627 34 773 37 324 28 539 18 063 37 065 40 531 27 460 33 546 34 445 27 787 62 392 13 822 44 336 27 022 56 725 16 327 24 420 20 719 27 127 32 007 42 006 47 526 .. 37 924 48 346 28 899 26 787 34 135 .. 6 680 3 714 .. 16 256 11 068

38 317 41 451 38 745 39 498 15 153 25 243 41 299 21 270 39 804 35 921 38 805 30 188 19 536 32 826 38 004 26 828 34 614 34 622 28 716 63 476 14 490 45 298 27 323 62 138 17 733 25 080 23 286 28 906 32 804 43 581 46 998 .. 37 898 48 568 29 498 27 574 34 818 .. 7 459 3 840 .. 19 572 11 584

39 539 40 632 37 711 38 026 15 091 25 001 40 023 19 578 38 028 35 459 37 971 29 932 19 919 32 465 34 850 26 917 33 857 32 745 28 326 54 142 14 166 44 452 29 135 56 517 18 566 25 257 22 889 27 120 32 202 40 688 50 744 .. 36 515 47 176 28 698 26 825 33 912 .. 8 104 4 223 .. 18 757 11 338

40 554 42 227 40 438 39 278 16 950 24 914 42 501 19 974 38 815 36 629 40 402 28 390 20 559 32 398 36 357 28 310 34 307 34 655 30 496 62 819 14 975 45 115 29 390 59 403 19 735 26 019 23 757 27 329 31 907 42 950 54 214 .. 36 325 48 808 29 675 27 638 35 222 .. 8 992 .. .. 19 844 11 521

42 467 44 188 41 475 40 808 19 069 26 434 44 239 22 721 40 434 38 213 43 216 25 998 21 505 34 541 36 857 30 184 35 377 35 380 31 512 63 276 16 083 47 237 30 739 63 328 21 251 26 413 24 263 28 287 31 970 45 016 55 079 .. 37 038 50 622 30 881 28 765 36 626 .. 9 920 .. .. 21 857 11 977

42 575 44 916 42 549 41 548 20 211 26 840 44 566 24 220 40 419 37 810 43 826 25 734 21 588 36 547 37 324 31 084 34 971 36 729 32 351 63 475 16 461 47 342 31 528 66 904 22 063 26 346 25 270 28 240 32 165 45 298 57 094 .. 37 630 52 770 30 812 28 917 37 548 .. 10 891 .. .. 23 254 12 370

43 672 45 263 42 190 42 414 21 037 27 214 45 365 25 630 40 157 38 205 44 222 25 805 22 836 41 087 38 832 32 065 34 691 37 556 33 325 61 126 16 405 47 672 33 620 66 353 22 840 27 279 26 114 28 515 32 395 45 926 57 964 .. 38 367 53 943 30 931 29 222 38 213 .. 11 818 .. .. 24 183 12 661

44 098 45 878 43 484 43 361 21 494 27 984 46 182 26 283 39 943 39 636 46 016 .. 23 616 .. .. 32 844 35 006 37 929 34 622 64 780 17 318 48 235 35 369 66 306 .. 28 002 26 815 29 922 33 034 46 719 .. .. 38 986 55 842 38 631 29 948 .. .. .. .. .. .. 12 795

1 2 http://dx.doi.org/10.1787/888933336415

Gross and net national income per capita US dollars, current prices and PPPs, 2014 or latest available year Net national income

Gross national income

70 000 60 000 50 000 40 000 30 000 20 000 10 000 0

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49

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS

HOUSEHOLD DISPOSABLE INCOME Disposable income, as a concept, is closer to the concept of income generally understood in economics, than either national income or GDP. At the total economy level it differs from national income in that additional income items are included, mainly other current transfers such as remittances. For countries where these additional items form significant sources of income the importance of focusing on disposable income in formulating policy is clear. Another important difference between national income and disposable income reflects the fact that the latter concerns the share of national income that is allocated to households only. Disposable income can be seen as the maximum amount that a household can afford to spend on the consumption of goods or services without having to reduce its financial or non-financial assets or by increasing its liabilities.

Comparability All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA. It’s important to note however that differences between the 2008 SNA and the 1993 SNA do not have a significant impact of the comparability and implies that data are highly comparable across countries.

Definition Household disposable income is the sum of wages and salaries, gross operating surplus (income earned from renting a dwelling or the imputed rental income of owneroccupiers), mixed income, net property income, net current transfers and social benefits other than social transfers in kind, less taxes on income and wealth and social security contributions paid by employees, the selfemployed and the unemployed. The indicator for the household sector includes the disposable income of non-profit institutions serving households (NPISH).

Overview On average over the period 2012-14, household disposable income in real terms increased in 20 out of 30 OECD countries for which data is available. Chile (7.5%), Norway (3.5%) and Mexico (3.1%) showed the highest growth rates. In contrast, Greece’s household disposable income fell by 8.6% and the household disposable income for Italy, Spain, Portugal, and Slovenia fell around 2% in the three year period.

Sources

In most OECD countries, the growth rate of real household disposable income over the three years to 2014 was lower than in the three years to 2004. In fact, in the three years to 2004 only two countries recorded small declines in disposable income (the Netherlands and Belgium) whereas 10 countries recorded declines in the three years to 2014. In Chile and Russia, however, disposable income showed very strong growth. Over that period, inequalities in household disposable income continued to increase in the majority of OECD countries.

• OECD (2015), Taxing Wages, OECD Publishing. • OECD (2015), OECD Pensions at a Glance, OECD Publishing. • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

• OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information Statistical publications

Methodological publications • Lequiller, F. and D. Blades (2014), Understanding National Accounts: Second Edition, OECD Publishing. • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD Social Expenditure Statistics.

50

OECD FACTBOOK 2015-2016 © OECD 2016

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS HOUSEHOLD DISPOSABLE INCOME

Real household disposable income Annual growth in percentage 2002 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

0.7 0.9 -0.6 2.4 .. 2.9 3.1 | 1.7 3.0 3.2 -0.7 .. 4.6 .. 2.1 .. 0.9 1.0 4.0 .. .. -0.4 0.8 8.4 -0.3 1.1 5.3 | 2.5 3.1 3.2 -0.2 .. 2.1 3.3 1.2 1.1 .. .. .. .. .. .. ..

2003

2004

5.6 2.0 -0.1 2.3 .. 4.0 2.4 8.2 3.9 0.6 0.7 .. 6.6 .. 2.5 .. 0.5 0.0 3.3 .. .. -1.4 | 9.5 4.6 0.8 -1.6 0.5 0.5 3.9 0.7 -0.5 .. 1.5 2.9 1.2 1.7 .. .. .. .. .. 7.7 ..

5.6 2.2 -0.4 3.6 .. 2.4 2.5 5.5 4.5 2.1 0.8 .. 4.7 .. 5.1 .. 1.3 1.1 4.0 .. 3.7 -0.3 5.0 3.4 -0.1 2.7 4.3 3.5 2.2 1.7 1.3 .. 0.8 3.5 1.6 1.5 .. .. .. .. .. 9.4 ..

2005 2.7 4.0 0.8 2.9 .. 4.6 2.6 9.1 1.2 0.8 0.2 .. 4.0 .. 7.6 .. 0.5 0.9 2.8 .. 3.6 -0.6 3.0 8.3 0.9 | 0.7 5.6 4.8 2.3 2.2 1.7 .. 2.0 1.4 0.9 1.3 .. .. .. .. .. 11.9 ..

2006 5.5 2.7 2.2 6.1 .. 5.6 | 2.4 11.9 2.6 2.2 1.0 .. 1.4 .. 3.8 .. 1.1 0.8 3.1 .. 6.6 0.2 4.6 -6.6 4.3 0.0 3.5 3.1 1.8 4.1 3.4 .. 1.3 3.8 1.6 1.7 .. .. .. .. .. 13.6 ..

2007

2008

2009

2010

2011

2012

2013

2014

7.1 2.1 2.0 3.7 .. 3.1 -0.8 11.0 3.5 2.9 0.0 3.2 -3.2 .. 6.3 .. 1.3 0.8 2.9 .. 2.5 1.9 5.0 6.0 5.2 1.4 9.6 4.6 0.4 5.6 3.9 .. 2.6 1.9 1.5 1.8 .. .. .. .. .. 14.1 ..

6.8 0.7 2.2 4.0 .. 2.3 -0.9 5.3 2.3 0.1 0.6 0.9 -2.4 .. 6.7 .. -1.4 -1.2 1.4 .. 2.0 -0.9 -1.9 3.4 4.3 1.0 5.0 2.8 1.8 2.0 1.1 .. 0.9 1.8 0.3 0.9 .. .. .. .. .. 8.0 ..

1.3 -0.3 2.1 1.6 6.4 2.1 2.7 -9.2 1.1 1.7 -0.6 0.0 -4.4 .. 0.3 .. -2.3 1.3 1.1 .. -7.5 0.7 2.8 3.2 6.0 1.5 1.4 -1.3 3.0 2.6 2.1 .. 3.3 -0.3 0.3 1.2 .. .. .. .. .. -2.0 0.8

4.9 -1.1 -1.2 2.4 6.3 0.1 3.6 -4.3 2.9 1.3 0.4 -11.0 -2.5 .. -2.7 .. -1.8 2.6 3.5 .. 6.3 -0.7 3.5 2.3 1.8 1.0 2.9 -0.5 -3.5 1.7 1.2 .. 0.7 1.3 -0.8 -0.7 .. .. .. .. .. 8.6 5.1

3.7 -0.3 -1.1 2.3 9.2 -1.6 1.0 3.8 1.0 0.1 0.9 -9.8 3.9 .. -3.5 .. -0.5 0.7 2.0 .. 3.3 0.6 1.4 4.1 0.0 -5.6 -2.3 0.1 -1.3 4.1 1.7 .. -2.1 2.7 -0.1 -0.2 .. 5.0 .. .. .. 4.7 5.3

0.9 2.0 0.4 2.7 7.4 -1.1 -0.5 0.3 -0.2 -0.9 0.5 -7.6 -3.2 .. -1.0 .. -5.7 1.0 1.5 .. 2.6 -1.2 3.9 4.4 1.1 -5.1 -1.8 -4.2 -5.3 3.8 4.0 .. 2.6 3.3 -1.9 -1.2 .. .. .. .. .. 6.1 2.7

1.5 -2.0 -0.7 2.4 5.8 -0.9 -1.4 6.3 0.3 0.0 0.5 -8.4 1.6 .. -2.3 .. -0.6 0.7 4.0 .. 3.2 -0.9 .. 3.0 2.8 -0.9 1.7 -2.1 -1.5 1.7 3.2 .. -1.1 -1.5 -0.5 -0.1 .. .. .. .. .. 3.1 3.3

.. 0.5 0.3 1.5 .. 1.7 -0.4 2.0 -1.0 1.1 1.3 .. 2.9 .. 0.6 .. -0.3 .. 2.6 .. .. 1.3 .. 2.9 .. 0.2 3.1 1.5 0.7 2.2 .. .. -0.7 2.7 0.9 0.8 .. .. .. .. .. .. 2.2

1 2 http://dx.doi.org/10.1787/888933336269

Real household disposable income Average annual growth in percentage 3-year average at the end of period (2012-14 or latest available period)

Average 2002-04

10 8 6 4 2 0 -2 -4 -6 -8 -10

1 2 http://dx.doi.org/10.1787/888933335075

OECD FACTBOOK 2015-2016 © OECD 2016

51

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS

HOUSEHOLD SAVINGS Household savings is the main domestic source of funds to finance capital investment, which is a major driver of longterm economic growth. Household savings rates vary considerably between countries because of institutional, demographic and socio-economic differences. For example, government provisions for old-age pensions and the demographic age structure of the population will influence the rate at which populations save (older persons tend to run down their financial assets during their retirement to the detriment of savings). Equally the availability and price of credit, as well as attitudes towards debt, may influence choices made by individuals regarding whether to spend or save.

Definition Household savings is estimated by subtracting household consumption expenditure from household disposable income plus the adjustment for the change in pension entitlements.

according to the 1993 SNA. One of the changes in the standards of the 2008 SNA that directly impacts the savings rates, concerns the treatment of pension schemes. These changes may have a significant impact on households’ savings rates in countries with (partially) funded defined benefit pension schemes, as is the case, for example, in the United Kingdom. For pensions provided by government to their employees, countries have some flexibility in the recording of the unfunded liabilities, which may hamper comparability across countries. Savings rates may be measured on either a net or a gross basis. Net savings rates are measured after deducting consumption of fixed capital (in respect of assets used in unincorporated enterprises and in respect of owneroccupied dwellings), from savings and from the disposable income of households, so that both savings and disposable income are shown on a net basis.

Household disposable income consists essentially of income from employment and from the operation of unincorporated enterprises, plus receipts of interest, dividends and social benefits minus payments of current taxes, interest and social contributions. Note that enterprise income includes the imputed rental income earned by owner-occupiers of dwellings. Household consumption expenditure consists mainly of cash outlays for consumer goods and services but it also includes the imputed expenditures that owner occupiers pay, as occupiers, to themselves as owners of their dwellings and the production of goods for own-final use such as agricultural products; the values of which are also included in income. The household savings rate is calculated as the ratio of household savings to household disposable income (plus the adjustment for the change in pension entitlements).

Sources

Comparability

Further information

All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled

Overview Household savings rates differ significantly across countries. From 2002-14 three countries had savings rates consistently above 9%: France, Germany and Switzerland. From 2007 Sweden also registered a savings rate above 9%. In contrast, six countries showed several years of negative savings rates over the period 2002-14; most notably in Greece (2006-13); New Zealand (2002-08); and Estonia (2002-07).

52

• OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Analytical publications • Fournier, J. and I. Koske (2010), “A Simple Model of the Relationship between Productivity, Saving and the Current Account”, OECD Economics Department Working Papers, No. 816. • Laiglesia, J. de and C. Morrison (2008), “Household Structures and Savings: Evidence from Household Surveys”, OECD Development Centre Working Papers, No. 267. • OECD (2015), OECD Economic Outlook, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing.

Websites • Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods. OECD FACTBOOK 2015-2016 © OECD 2016

HOUSEHOLD INCOME AND WEALTH • INCOME AND SAVINGS HOUSEHOLD SAVINGS

Household net saving rates As a percentage of household disposable income Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

0.0 8.9 11.0 2.3 .. 6.3 1.2 -9.5 .. 11.6 9.6 .. 3.1 .. 0.0 .. 9.6 3.3 .. .. .. 7.9 -6.6 .. 9.0 3.9 .. 8.5 5.2 7.8 15.3 .. 3.8 5.2 8.9 7.3 .. .. 31.5 .. .. .. ..

0.5 9.2 10.6 1.7 .. 5.7 1.8 -9.3 .. 10.9 10.1 .. 1.7 .. 0.4 .. 9.1 2.7 .. .. 10.1 7.4 -4.1 .. 7.9 2.7 .. 6.1 6.7 6.6 14.8 .. 2.4 5.0 9.0 7.2 .. .. 33.9 .. .. .. ..

1.5 9.2 8.9 2.3 .. 4.9 -2.2 -11.0 .. 11.0 10.1 .. 4.5 .. 1.2 .. 9.5 2.3 .. .. 8.6 6.8 -3.8 .. 4.0 2.7 .. 7.1 5.0 5.8 13.7 .. 0.5 4.7 8.7 6.4 .. .. 33.8 .. .. .. ..

1.1 10.7 8.5 1.5 .. 6.1 -4.6 -10.7 .. 9.4 10.1 .. 5.7 .. 1.9 .. 9.0 1.6 .. .. 8.2 5.7 -5.9 .. 3.0 1.8 .. 9.4 3.2 5.4 14.0 .. -0.3 2.7 7.8 5.7 .. .. 35.4 .. .. 11.0 ..

1.8 11.3 9.2 3.5 .. 7.8 -1.7 -11.2 .. 9.4 10.1 -3.4 6.3 .. -0.6 .. 8.4 1.3 .. .. 9.1 3.8 -3.3 .. 2.7 0.4 .. 11.1 1.4 6.9 15.8 .. -1.2 3.4 7.1 4.9 .. .. 37.2 .. .. 12.4 ..

4.0 12.1 9.4 2.9 .. 7.0 -3.1 -7.3 .. 9.8 10.2 -3.5 2.2 .. -0.7 .. 8.0 1.1 .. .. 8.4 3.9 -1.0 .. 2.2 -0.8 .. 9.4 -1.0 9.4 17.4 .. -0.7 3.1 6.9 4.6 .. .. 39.2 .. .. 12.1 ..

10.0 11.9 10.0 3.9 7.0 6.3 -4.2 1.6 .. 9.5 10.5 -5.6 1.5 .. 6.3 .. 7.7 0.6 .. .. 8.1 3.7 -1.1 .. 0.8 -1.1 .. 9.7 1.6 12.7 16.7 .. -0.8 5.1 7.1 5.0 .. .. 39.9 .. .. 10.1 -1.1

9.1 11.3 11.4 5.1 12.3 8.5 0.8 6.9 .. 10.8 10.0 -4.5 3.6 .. 12.2 .. 7.0 2.3 .. .. 8.4 7.1 1.1 .. 3.2 2.7 .. 7.7 7.3 12.2 17.1 .. 4.0 6.3 8.5 7.4 .. .. 40.4 .. .. 13.1 -0.5

10.2 9.3 8.2 4.3 8.8 7.6 2.1 3.3 .. 10.4 10.0 -9.0 3.6 .. 9.6 .. 4.1 2.1 4.7 .. 8.8 4.9 3.0 .. 3.0 1.3 .. 6.1 3.7 11.0 17.0 .. 6.1 5.8 6.9 6.1 .. .. 42.1 .. .. 15.5 -0.8

11.2 7.9 6.6 4.3 8.6 5.9 0.9 4.1 .. 10.0 9.6 -8.2 4.1 .. 7.3 .. 3.6 2.6 3.9 .. 6.9 5.8 1.7 .. -0.5 -0.9 .. 5.5 4.6 12.7 17.8 .. 3.4 6.2 6.5 5.4 .. .. 40.9 .. .. 13.8 -1.1

10.3 9.2 6.4 5.0 9.9 6.2 0.0 1.4 .. 9.5 9.3 -8.3 2.6 .. 8.5 .. 1.8 1.4 3.9 .. 6.1 6.8 2.2 .. -0.5 -0.5 .. 3.2 2.6 15.3 18.5 .. 2.9 7.9 6.0 4.9 .. .. 40.7 .. .. 12.5 -2.1

9.7 7.3 5.0 4.9 9.7 5.5 -0.4 3.9 .. 9.1 9.1 -16.4 3.9 .. 8.1 .. 3.9 0.0 5.6 .. 5.4 7.3 .. .. 0.7 -0.2 .. 5.7 4.2 15.1 19.0 .. 0.0 4.9 6.1 4.7 .. .. .. .. .. 10.9 -2.5

.. 7.8 5.1 3.8 .. 5.7 -6.4 3.1 .. 9.6 9.5 .. 4.9 .. .. .. 3.4 .. .. .. .. 8.2 .. .. .. -2.3 .. 6.5 3.9 15.3 .. .. -1.9 5.0 6.1 4.3 .. .. .. .. .. .. -2.4

1 2 http://dx.doi.org/10.1787/888933336288

Household net saving rates As a percentage of household disposable income Canada

France

Germany

Japan

United States

14 12 10 8 6 4 2 0 -2

1 2 http://dx.doi.org/10.1787/888933335091

OECD FACTBOOK 2015-2016 © OECD 2016

53

HOUSEHOLD INCOME AND WEALTH • INCOME INEQUALITY AND POVERTY

INCOME INEQUALITY Income inequality and poverty

Income inequalities are one of the most visible manifestations of differences in living standards within each country. In many OECD countries, income inequalities reflect developments in the labour market, as well as in tax and transfer systems.

people with highest income) to that of the first decile; P90/P50 of the upper bound value of the ninth decile to the median income; and P50/P10 of median income to the upper bound value of the first decile.

Comparability Definition Income is defined as household disposable income in a particular year. It consists of earnings, self-employment and capital income and public cash transfers; income taxes and social security contributions paid by households are deducted. The income of the household is attributed to each of its members, with an adjustment to reflect differences in needs for households of different sizes. The Gini coefficient is based on the comparison of cumulative proportions of the population against cumulative proportions of income they receive, and it ranges between 0 in the case of perfect equality and 1 in the case of perfect inequality. The Palma index is the ratio between the income share of the top 10% and the bottom 40%; S90/S10 is the ratio of the average income of the 10% richest to the 10% poorest; S80/S20 of the average income of the 20% richest to the 20% poorest. P90/P10 is the ratio of the upper bound value of the ninth decile (i.e. the 10% of

Data have been provided by national experts applying common methodologies and standardised definitions. In many cases, experts made several adjustments to source data to conform to standardised definitions. While this approach improves comparability, full standardisation cannot be achieved. Small differences between periods and across countries are usually not significant. Results refer to different years. “2012 or latest year available” data refer to the income in 2012 in all countries except Japan (2009); Indonesia and Russia (2010); Brazil, Canada and Chile (2011); India (2013); and China (2014). “Mid-1990s” data refer to the income earned between 1993 and 1996. “Mid-1980s” data refer to the income earned between 1983 and 1987 in all countries for which data are available except Czech Republic (1992) and Hungary (1991). For the emerging economies except Russia, Gini coefficients are not strictly comparable with OECD countries as they are based on per capita incomes except India and Indonesia for which per capita consumption was used.

Overview There is considerable variation in income inequality across OECD countries. Inequality as measured by the Gini coefficient ranges from 0.25 in Denmark to approximately twice that value in Chile and Mexico. The Nordic and Central European countries have the lowest inequality in disposable income while inequality is high in Chile, Israel, Mexico, Turkey and the United States. Alternative indicators of income inequality suggest similar rankings. The gap between the average income of the richest and the poorest 10% of the population was almost 10 to 1 on average across OECD countries in 2012, ranging from 5 to 1 in Denmark to five times larger in Chile and Mexico. From the mid-1980s to around 2012, inequality rose in 16 out of 18 countries for which longer-run data are available. The increase was strongest in Finland, Luxembourg and Sweden. Declines occurred in Turkey, and Greece to a lesser extent. Income inequality generally rose faster from the mid-1980s to the mid1990s than in the following periods. With measurement-related differences in mind, the emerging economies have higher levels of income inequality than most OECD countries, particularly Brazil and South Africa. Comparable data from the early 1990s suggest that inequality increased in Asia, decreased in Latin America and remained very high in South Africa.

54

Sources • OECD (2015), OECD Social and Welfare Statistics (Database).

Further information Analytical publications • OECD (2015), How’s Life? Measuring Well-being, OECD Publishing. • OECD (2015), In It Together: Why Less Inequality Benefits All, OECD Publishing. • OECD (2011), Divided We Stand, Why Inequality Keeps Rising, OECD Publishing. • OECD (2008), Growing Unequal? Income Distribution and Poverty in OECD Countries, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Websites • OECD Centre for Opportunity and Equality, http://oe.cd/ cope. • OECD Income Distribution Database (supplementary material), www.oecd.org/social/incomedistributiondatabase.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HOUSEHOLD INCOME AND WEALTH • INCOME INEQUALITY AND POVERTY INCOME INEQUALITY

Income inequality Different summary inequality measures, 2012 or latest year available

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Gini coefficient (disposable income, post taxes and transfers)

Palma ratio (S90/S40 disposable income decile share)

S90/S10 disposable income decile share

S80/S20 disposable income quintile share

P90/P10 disposable income decile ratio

P90/P50 disposable income decile ratio

P50/P10 disposable income decile ratio

0.33 0.28 0.27 0.32 0.50 0.26 0.25 0.34 0.26 0.31 0.29 0.34 0.29 0.26 0.30 0.37 0.33 0.34 0.31 0.30 0.46 0.28 0.33 0.25 0.30 0.34 0.25 0.25 0.34 0.27 0.29 0.40 0.35 0.39 0.29 0.32 0.55 0.47 0.34 0.41 0.40 0.67

1.2 1.0 0.9 1.2 3.3 0.9 0.9 1.3 0.9 1.2 1.1 1.3 1.0 0.9 1.1 1.6 1.3 1.3 1.1 1.1 2.5 1.0 1.3 0.9 1.1 1.3 0.8 0.8 1.3 1.0 1.0 1.9 1.5 1.8 1.1 1.3 .. .. .. .. .. ..

8.8 7.0 5.9 8.6 26.5 5.4 5.2 9.6 5.4 7.4 6.6 12.3 7.3 5.6 7.4 13.7 11.4 10.7 10.2 7.1 25.1 6.8 8.2 6.2 7.3 10.1 5.7 5.5 11.7 6.3 6.7 14.0 10.5 17.9 7.7 9.5 .. .. .. .. .. ..

5.5 4.3 4.0 5.2 13.0 3.6 3.5 5.8 3.7 4.6 4.3 6.3 4.5 3.7 4.7 7.5 5.8 6.2 5.5 4.6 11.5 4.2 5.3 3.8 4.7 5.9 3.7 3.7 6.1 4.1 4.3 7.8 5.9 8.5 4.7 5.5 .. .. .. .. .. ..

4.4 3.5 3.4 4.2 8.5 3.0 2.8 4.7 3.1 3.6 3.5 4.9 3.8 3.0 3.8 6.1 4.4 5.2 4.8 3.6 8.1 3.3 4.2 3.0 3.9 4.7 3.2 3.3 4.9 3.3 3.5 6.0 4.2 6.2 3.8 4.3 .. .. .. .. .. ..

2.0 1.8 1.7 1.9 3.3 1.8 1.6 2.2 1.7 1.9 1.9 1.9 1.8 1.7 2.0 2.2 2.0 2.0 1.9 1.9 2.8 1.8 2.1 1.6 1.9 2.1 1.7 1.7 2.0 1.7 1.8 2.5 2.1 2.3 1.9 2.0 .. .. .. .. .. ..

2.2 2.0 2.0 2.1 2.6 1.7 1.7 2.1 1.8 1.9 1.9 2.5 2.0 1.7 1.9 2.7 2.2 2.6 2.5 1.9 2.9 1.9 2.0 1.9 2.0 2.2 1.9 2.0 2.4 1.9 1.9 2.4 2.0 2.8 2.0 2.1 .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336302

Trends in income inequality Percentage point changes in the Gini coefficient 2012 or latest available year

Mid-1990s

Mid-1980s

0.70 0.60 0.50 0.40 0.30 0.20 0.10 0.00

1 2 http://dx.doi.org/10.1787/888933335119

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HOUSEHOLD INCOME AND WEALTH • INCOME INEQUALITY AND POVERTY

POVERTY RATES AND GAPS Avoiding economic hardship is a primary objective of social policy. As perceptions of “a decent standard of living” vary across countries and over time, no commonly agreed measure of “absolute” poverty across OECD countries exists. A starting point for measuring poverty is therefore to look at “relative” poverty, whose measure is based on the income that is most typical in each country in each year.

Definition The poverty rate is the ratio of the number of people (in a given age group) whose income falls below the poverty line, taken as half the median household income of the total population. However, two countries with the same poverty rates may differ in terms of the relative income level of the poor. To measure this dimension, the poverty gap, i.e. the percentage by which the mean income of the poor falls below the poverty line. Income is defined as household disposable income in a particular year. It consists of earnings, self-employment and capital income and public cash transfers; income taxes and social security contributions paid by households are deducted. The income of the household is attributed to each of its members, with an adjustment to reflect differences in needs for households of different sizes (i.e. the needs of a household composed of four people are assumed to be twice as large as those of a person living alone).

Comparability Data have been provided by national experts applying common methodologies and standardised definitions. In many cases, experts made several adjustments to source data to conform to standardised definitions. While this approach improves comparability, full standardisation cannot be achieved. Measurement problems are especially severe at the top but also at the bottom end of the income scale. As large proportions of the population are clustered around the poverty line, small changes in their income can lead to large swings in poverty measures. Small differences between periods and across countries are usually not significant. Results refer to different years. “2012 or latest year available” data refer to the income in 2012 in all countries except Japan (2009), Russia (2010), Canada and Chile (2011). “Mid-1990s” data refer to the income earned between 1993 and 1996. “Mid-1980s” data refer to the income earned between 1983 and 1987 in all countries for which data are available except the Czech Republic (1992) and Hungary (1991).

Overview

Sources

Across OECD countries, the average poverty rate was about 11% around 2012. There is considerable diversity across countries: poverty rates are almost 20% in Israel and Mexico, but below 6% in the Czech Republic and Denmark. Poverty rates vary across age groups: in Japan and Korea, older people are more likely to be poor, while in Turkey child poverty is a greater issue. The United States, Chile, Israel and Mexico share higher overall poverty rates, while the Nordic countries combine lower poverty rates.

• OECD (2015), “Income Distribution”, OECD Social and Welfare Statistics (database).

On average, in OECD countries, the mean income of poor people is 31% below the poverty line (poverty gap), with larger gaps in countries hard hit by the recent crisis like Italy, Greece, Spain and the United States and lower ones in Belgium, Finland, Germany, New Zealand and Slovenia. In general, countries with higher poverty rates also have higher poverty gaps. From the mid-1980s to around 2012, poverty rates rose in 15 out of 18 countries for which data are available, resulting in an overall increase of 2.7 percentage points for the OECD as a whole. The largest rises were experienced by Israel and Sweden, and the only decline was registered in Denmark.

56

Further information Analytical publications • Förster, M. (1994), “Measurement of Low Incomes and Poverty in a Perspective of International Comparisons”, OECD Labour Market and Social Policy Occasional Papers, No. 14. • OECD (2015), How’s Life? Measuring Well-being, OECD Publishing. • OECD (2015), In It Together: Why Less Inequality Benefits All, OECD Publishing. • OECD (2011), Divided We Stand, Why Inequality Keeps Rising, OECD Publishing. • OECD (2008), Growing Unequal?: Income Distribution and Poverty in OECD Countries, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Websites • OECD Income Distribution Database (supplementary material), www.oecd.org/social/income-distributiondatabase.htm OECD FACTBOOK 2015-2016 © OECD 2016

HOUSEHOLD INCOME AND WEALTH • INCOME INEQUALITY AND POVERTY POVERTY RATES AND GAPS

Poverty rates and poverty gaps 2012 or latest available year Relative poverty rates (50% median income) Entire population Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

0.14 0.10 0.10 0.12 0.18 0.05 0.05 0.12 0.07 0.08 0.08 0.15 0.10 0.06 0.08 0.18 0.13 0.16 0.15 0.08 0.19 0.08 0.10 0.08 0.10 0.13 0.08 0.09 0.14 0.09 0.09 0.18 0.11 0.18 0.10 0.11 .. .. .. .. 0.14 ..

Children (age 0-17) 0.13 0.10 0.11 0.14 0.24 0.08 0.03 0.12 0.03 0.11 0.07 0.21 0.17 0.08 0.09 0.25 0.18 0.16 0.09 0.13 0.23 0.10 0.13 0.06 0.13 0.18 0.15 0.09 0.21 0.08 0.08 0.26 0.10 0.21 0.12 0.13 .. .. .. .. 0.19 ..

Working-age population (age 18-65) 0.11 0.09 0.10 0.12 0.15 0.05 0.07 0.12 0.07 0.08 0.08 0.16 0.10 0.06 0.09 0.15 0.12 0.14 0.10 0.08 0.16 0.08 0.09 0.10 0.10 0.13 0.08 0.08 0.14 0.09 0.06 0.14 0.10 0.16 0.10 0.10 .. .. .. .. .. ..

Poverty gap (mean) Retirement-age population (over 65)

Entire population

0.34 0.11 0.11 0.07 0.21 0.03 0.05 0.12 0.09 0.04 0.09 0.07 0.06 0.03 0.07 0.21 0.09 0.33 0.49 0.03 0.27 0.02 0.08 0.04 0.08 0.08 0.04 0.16 0.07 0.09 0.23 0.17 0.13 0.21 0.08 0.13 .. .. .. .. .. ..

0.27 0.34 0.23 0.30 0.33 0.25 0.31 0.31 0.23 0.25 0.22 0.39 0.31 0.29 0.30 0.35 0.41 0.33 0.39 0.26 0.38 0.31 0.23 0.37 0.27 0.31 0.30 0.23 0.39 0.26 0.24 0.30 0.33 0.40 0.29 0.31 .. .. .. .. 0.27 ..

1 2 http://dx.doi.org/10.1787/888933336319

Trends in poverty rates Relative poverty rates in mid-1980s, mid-1990s and 2012 or latest available year 2012 or latest available year

Mid-1990s

Mid-1980s

0.25

0.20

0.15

0.10

0.05

0.00

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH

HOUSEHOLD FINANCIAL ASSETS Household wealth

Along with income, wealth is a key measure of households’ economic resources. Households hold both non-financial and financial wealth. The structure of financial assets affects households financial risks as different types of securities carry different risk levels.

institutions serving households (NPISHs) sector. They exclude financial derivatives, loans and other accounts receivable.

Definition

Comparability

Household financial assets are classified according to the 2008 System of National Accounts (currency and deposits; debt securities; equity, investment funds shares; life insurance and annuity entitlements; and pension entitlements and entitlements to non-pension benefits). They relate to the households and the non-profit

International comparability may be hampered by differences in the way pension systems are organised and operated in the various countries. According to the 2008 SNA employment related pension entitlements that are expected or likely to be enforceable, are to be recognised as liabilities towards households regardless of whether the necessary assets exist in segregated schemes or not. However, for pensions provided by a government to their employees, countries have some flexibility in the recording of the unfunded liabilities, which may hamper comparability across countries.

Overview The comparison of the structure of households’ stocks of financial assets between 2008 and 2014 gives some insight into the impact of recent economic developments on the restructuring of their portfolio towards financial instruments better adapted to the new environment, i.e. more liquid and less risky. There is a slight decrease in the share of both currency and deposits, and debt securities for two-thirds of OECD countries over the period 2008-14. The largest decreases were recorded for Hungary and Italy (minus 8 percentage points) for currency and deposits and debt securities respectively. The share of life insurance remained relatively stable in a large number of OECD countries. On the other hand, the share of pension entitlements, equity, and investment fund shares became more popular in most OECD countries, the largest rise being observed in Greece (13 percentage points) for equity, and in the Netherlands (11 percentage points) for pension entitlements. Considerable differences in national preferences for financial instruments can be observed across the OECD. Currency and deposits, the most liquid of the asset categories and also considered the one with the least risk, represented more than 50% in five OECD countries (the Czech Republic, Greece, Luxembourg, the Slovak Republic and Turkey) in 2014, and in Japan in 2013. The proportion of debt securities held by households was low in most OECD countries in 2014 with the exception of Italy (13%). Furthermore, despite the financial crisis, equity remained a predominant portfolio asset held by households in for example Estonia (53%), Finland (36%), and Sweden (35%). Household reserves in life insurance and pension funds represented more than half of the stock of total financial assets in the Netherlands (65%), Chile (62%), the United Kingdom (59%), Australia (56%) and Denmark (49%), whereas they remained at a very low level in Greece (3%).

The financial assets are classified according to their liquidity.

Any changes in the stocks of financial assets over a period are the result of two components: net acquisitions of financial assets; and changes in valuations (holding gains and losses depending on the performance of financial markets), of which those for quoted shares are the most relevant.

Sources • OECD (2015), “Financial Balance Sheets”, OECD National Accounts Statistics (Database).

Further information Analytical publications • OECD (2015), OECD Business and Finance Outlook, OECD Publishing. • OECD (2015), OECD Economic Outlook, OECD Publishing. • Ynesta, I. (2009), “Households’ Wealth Composition across OECD Countries and Financial Risks Borne by Households”, Financial Market Trends, Vol. 2008/2.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2014), National Accounts of OECD Countries, Financial Balance Sheets, OECD Publishing.

Methodological publications • Lequiller, F. and D. Blades (2014), Understanding National Accounts: Second Edition, OECD Publishing. • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD National Accounts Statistics.

Websites • Financial statistics, www.oecd.org/std/fin-stats.

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH HOUSEHOLD FINANCIAL ASSETS

Financial assets of households by type of assets As a percentage of total financial assets Currency and deposits

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Debt securities

Equity

Investment funds shares

Life insurance and annuities

Pension funds

2008

2014

2008

2014

2008

2014

2008

2014

2008

2014

2008

2014

23.7 44.5 30.3 26.6 14.4 52.9 21.3 22.7 39.1 30.4 39.4 71.4 37.5 24.1 42.7 27.4 29.2 53.7 .. 54.5 .. 22.7 .. 29.4 46.4 41.8 61.8 47.9 46.7 16.4 28.8 .. 28.1 14.3 .. .. .. .. .. .. .. ..

22.2 41.0 30.5 23.3 13.7 50.9 16.4 28.0 31.5 28.7 39.3 66.9 29.1 .. 36.9 .. 31.5 .. 42.0 50.8 .. 19.6 .. 28.6 46.7 43.0 61.8 49.0 43.0 14.3 .. 79.8 24.0 13.2 .. .. .. .. .. .. .. ..

0.7 8.8 10.0 3.2 0.0 0.6 4.9 0.8 2.1 2.2 6.3 9.0 5.6 4.3 0.1 17.6 21.3 4.3 .. 11.8 .. 1.8 .. 0.8 1.0 5.2 0.2 1.4 2.2 2.5 9.4 .. 1.4 9.2 .. .. .. .. .. .. .. ..

0.2 7.1 6.5 1.8 0.0 3.9 1.6 0.1 3.6 1.7 3.8 1.4 8.4 .. 0.1 .. 13.4 .. 5.8 7.7 .. 0.5 .. 0.4 0.3 3.9 1.4 0.7 1.3 1.4 .. 2.6 1.7 4.6 .. .. .. .. .. .. .. ..

18.8 16.6 23.0 16.2 26.0 25.1 20.9 63.4 29.4 17.9 9.4 6.9 26.9 .. 16.2 10.2 24.4 6.4 .. 11.6 .. 12.0 .. 21.2 19.6 20.7 0.3 25.2 23.7 29.5 9.3 .. 7.3 28.9 .. .. .. .. .. .. .. ..

18.0 20.4 25.8 19.2 17.9 21.7 23.6 52.8 36.5 20.5 9.9 20.4 29.0 .. 13.7 .. 22.0 .. 15.6 12.6 .. 8.1 .. 21.5 18.6 21.1 0.2 22.2 26.0 35.0 .. 8.6 7.0 34.1 .. .. .. .. .. .. .. ..

0.0 7.2 12.4 15.0 4.2 4.9 5.3 0.4 6.0 7.9 9.0 2.1 6.9 .. 0.0 0.0 6.0 3.2 .. 11.1 .. 3.1 .. 3.2 5.6 4.4 7.1 3.3 8.8 7.2 8.9 .. 2.5 10.5 .. .. .. .. .. .. .. ..

0.0 8.4 12.4 18.0 5.4 5.5 7.3 0.8 9.1 6.5 9.5 2.6 10.7 .. 0.0 .. 9.7 .. 3.7 11.9 .. 2.9 .. 4.1 6.0 3.6 7.3 3.6 11.4 8.3 .. 1.6 4.2 13.0 .. .. .. .. .. .. .. ..

0.0 12.9 14.7 .. 13.0 5.8 24.5 1.4 7.3 33.6 16.5 2.5 5.2 .. 15.0 9.2 9.1 14.5 .. 7.8 .. 10.4 .. 4.2 7.0 12.3 8.3 5.1 5.9 14.2 5.6 .. 12.6 2.3 .. .. .. .. .. .. .. ..

0.0 12.1 15.0 .. 12.7 5.7 27.8 2.0 6.9 34.4 16.8 2.2 4.6 .. 16.2 .. 13.2 .. 21.1 12.2 .. 8.4 .. 3.2 4.8 12.7 7.3 7.5 7.5 9.5 .. 0.6 10.4 1.9 .. .. .. .. .. .. .. ..

50.1 6.3 6.3 .. 41.9 5.2 20.2 4.6 11.3 0.0 13.1 0.4 10.0 .. 22.0 29.4 5.7 13.8 .. 2.0 .. 45.8 .. 24.1 15.1 7.4 8.4 4.9 8.1 27.5 34.6 .. 43.3 32.0 .. .. .. .. .. .. .. ..

56.0 6.4 6.7 .. 49.8 6.5 21.3 9.9 8.3 0.0 14.1 1.1 3.6 .. 28.5 .. 6.3 .. 3.8 3.2 .. 56.9 .. 27.1 10.2 5.7 13.9 7.4 8.0 29.6 .. 4.4 48.5 31.2 .. .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336294

Financial assets of households by type of assets As a percentage of their total financial assets, 2014 or latest available year Currency and deposits

Debt securities

Equity

Investment funds shares

Life insurance and annuities

Pension funds

100 90 80 70 60 50 40 30 20 10 0

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH

HOUSEHOLD DEBT The household debt ratio measures the indebtedness of households in relation to their income, that is their spending and saving capacity. High debt ratios are often interpreted as a sign of financial vulnerability though one should also take into account the availability of assets (e.g. dwellings) in such an assessment. High indebtedness levels generally increase the financing costs of the borrower, deteriorate balance sheet positions and may restrict access to new financing.

Definition

the households sector, liabilities predominantly consist of loans, and more particularly mortgage loans for the purchase of houses.

Comparability As a number of OECD countries are not able to provide a breakdown between households and NPISHs, household debt refers to the aggregated sector “Households and NPISHs” to ensure the highest level of comparability between countries.

Debt is a commonly used concept, defined as a specific subset of liabilities identified according to the types of financial instruments included or excluded. Generally, debt is defined as all liabilities that require payment or payments of interest or principal by the debtor to the creditor at a date or dates in the future. Consequently, all debt instruments are liabilities, but some liabilities such as equity and investment fund shares and financial derivatives are not considered as debt. Debt is thus obtained as the sum of the following liability categories, whenever available/applicable in the financial balance sheet of the households and non-profit institutions serving households (NPISHs) sector: monetary gold and Special Drawing Rights (SDRs), currency and deposits; debt securities; loans; insurance, pension, and standardised guarantees; and other accounts payable. For

Overview Households remain highly indebted in a large number of OECD economies. In 2013, the ratio of household debt to net disposable income (NDI) was far higher than the OECD average (134%), in Denmark, the Netherlands, Norway, Ireland, Australia and Switzerland. Hungary had the lowest debt ratio at 57% in 2013. The level of household debt rose in most OECD countries over the period 2007-13. As a percentage of NDI, Greece recorded the largest increase during this period (around 31 percentage points). Belgium, Canada, the Netherlands and Poland showed increases of around 20 percentag e points, followed by the Slovak Republic with 19 percentage points. A net fall of respectively 31 and 28 percentage points were observed in the United Kingdom and the United States, and to a lesser extent in Estonia, Spain and Ireland. Long-term loans, mainly consisting of mortgage loans, remain the largest component of household debt, contributing more than 80% of the total household debt in twenty four OECD countries and even more than 90% in eighteen countries. In 2013, the highest levels were recorded in Estonia (98%) and Norway (97%) and the lowest ratios were observed in the United States (72%), and Korea (82%).

Sources • OECD (2015), “Financial Balance Sheets”, OECD National Accounts Statistics (Database).

Further information Analytical publications • • • •

OECD (2015), Economic Policy Reforms, OECD Publishing. OECD (2015), OECD Economic Outlook, OECD Publishing. OECD (2015), OECD Economic Surveys, OECD Publishing. Schich S. and J.-H. Ahn (2007), “Housing Markets and Household Debt: Short-term and Long-term Risks”, Financial Market Trends, Vol. 2007/1.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2014), National Accounts of OECD Countries, Financial Balance Sheets, OECD Publishing.

Methodological publications • Lequiller, F. and D. Blades (2014), Understanding National Accounts: Second Edition, OECD Publishing. • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD National Accounts Statistics.

Websites • Financial statistics, www.oecd.org/std/fin-stats.

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH HOUSEHOLD DEBT

Household debt Debt of households and non-profit institutions serving households, as a percentage of net disposable income Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

154.6 79.3 68.3 114.4 .. 27.1 242.9 32.7 75.6 77.5 113.6 .. 27.0 .. 125.3 .. 59.4 139.5 .. .. .. 204.4 .. 147.8 .. 121.6 24.2 33.6 94.1 121.6 173.3 .. 138.8 112.4 .. .. .. .. .. .. .. ..

165.0 79.4 70.7 119.4 .. 29.2 248.7 41.7 79.9 81.1 112.0 .. 35.8 .. 146.1 .. 62.5 138.1 .. .. .. 222.9 .. 151.4 19.7 123.6 27.7 35.4 102.3 128.2 182.5 .. 151.6 120.3 .. .. .. .. .. .. .. ..

178.4 83.3 74.6 124.8 .. 34.1 261.9 54.0 88.6 81.9 110.4 .. 41.2 .. 168.7 .. 66.2 137.4 .. .. .. 233.0 | .. 161.6 21.6 126.8 25.9 36.0 113.6 137.0 184.2 .. 164.9 126.9 .. .. .. .. .. .. .. ..

186.4 87.5 79.5 132.1 .. 39.4 282.1 71.7 99.2 88.4 108.1 .. 47.1 .. 199.0 .. 71.3 137.9 .. .. .. 251.5 .. 167.4 25.0 135.9 29.8 40.3 128.2 146.7 188.2 .. 167.2 134.6 .. .. .. .. .. .. .. ..

190.3 88.8 83.3 135.2 .. 43.6 299.4 93.6 109.4 93.6 105.7 72.7 53.8 .. 223.2 .. 76.1 137.3 .. .. .. 256.9 .. 199.2 31.2 140.6 32.8 44.9 144.3 153.8 187.6 .. 178.9 139.7 .. .. .. .. .. .. .. ..

192.8 88.6 87.4 143.4 .. 52.9 324.7 104.7 114.7 96.6 102.6 80.8 62.2 .. 233.3 .. 80.2 133.6 .. .. .. 261.4 .. 207.9 39.2 145.7 38.9 52.2 154.1 157.4 182.1 .. 183.3 143.1 .. .. .. .. .. .. .. ..

188.1 90.2 89.8 148.4 58.9 58.8 339.4 101.1 117.1 98.7 99.4 85.3 76.1 .. 227.1 .. 81.6 132.2 .. .. .. 274.3 .. 207.6 51.5 148.9 42.5 53.5 150.1 159.5 180.4 .. 178.2 135.3 .. .. .. .. .. .. .. ..

195.3 90.3 90.8 157.4 57.2 60.3 338.7 108.6 117.5 104.3 100.3 86.7 76.6 .. 235.6 .. 86.5 132.4 .. .. .. 286.6 .. 207.0 52.8 151.4 42.1 56.2 145.2 163.5 184.0 .. 167.5 133.7 .. .. .. .. .. .. .. ..

195.5 94.2 96.0 160.2 57.5 61.9 325.1 107.1 119.6 107.5 98.3 104.3 81.1 .. 231.3 .. 90.4 131.9 .. .. .. 293.9 .. 212.1 57.2 154.4 43.1 58.9 148.6 170.7 189.3 .. 158.7 127.2 .. .. .. .. .. .. .. ..

194.2 93.5 102.4 161.5 57.2 64.4 319.5 95.6 121.0 107.1 96.5 111.5 74.5 .. 230.3 .. 89.9 128.3 157.8 .. .. 287.8 .. 216.8 60.7 144.9 49.4 57.7 142.7 168.5 194.0 .. 159.1 119.0 .. .. .. .. .. .. .. ..

196.6 89.5 104.2 163.1 56.8 65.8 314.6 92.8 124.0 103.4 95.5 109.0 63.1 .. 221.9 .. 92.0 127.1 159.4 .. .. 288.4 .. 220.2 58.6 150.9 54.8 59.5 141.2 167.1 196.0 .. 153.7 113.6 .. .. .. .. .. .. .. ..

200.4 89.3 107.3 163.8 57.9 67.6 313.0 83.6 123.3 103.8 94.5 112.4 57.1 .. 214.1 .. 90.6 129.2 160.3 .. .. 280.9 .. 221.9 59.5 141.3 57.6 58.8 134.1 169.7 197.4 .. 152.0 115.1 .. .. .. .. .. .. .. ..

.. 89.1 111.9 166.1 .. 68.9 313.3 83.7 126.7 104.7 93.6 .. 54.4 .. .. .. 90.1 .. 164.2 .. .. 273.6 .. 223.9 .. 140.8 62.3 57.6 128.0 173.4 .. .. 155.7 113.4 .. .. .. .. .. .. .. ..

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Households and NPISHs debt As a percentage of net disposable income 2014 or latest available year

2007

360 330 300 270 240 210 180 150 120 90 60 30 0

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH

NON-FINANCIAL ASSETS OF HOUSEHOLDS Non-financial assets held by households reflect the assets owned by unincorporated household enterprises and dwellings owned by households, with the latter representing by far the bulk of non-financial assets held by households. They form an important part of overall wealth and can provide an important additional source of revenue; either through their sale or refinancing, or as income via rentals of residential property for example. Estimates of non-financial assets held by households also play an important role in economic analyses, such as studies of asset bubbles, and analyses of living standards.

Definition Non-financial assets held by households include, in theory, both produced and non-produced non-financial assets, i.e. dwellings, other buildings and structures and land improvements; machinery and equipment including livestock; and intellectual property products, such as software and literary originals, and non-produced assets such as land and taxi-licenses. In practice dwellings form by far the most significant component.

quality than it is for similar information collected on incorporated businesses. Moreover, in practice, countries use a variety of methods to differentiate between the value of dwellings and the land on which the dwellings sit, meaning that comparisons of these subcomponents across countries are challenging. Some countries include the value of land under dwellings within the figures for dwellings. This matters not only for international comparability but also because dwellings, as produced assets depreciate whereas land, as a nonproduced asset, does not. A particular challenge arises from capturing quality change and quality differences in the housing stock and valuing it accordingly. The caveats above, pertaining to the distinction between land and dwellings, mean that users should be particularly careful in using the figures in making international comparisons. The OECD is working with national statistics institutes so that future versions of these data reflect a greater degree of international comparability. Data are assets net of depreciation for all countries except for the Slovak Republic and Poland (gross recording).

Except for dwellings, only those assets owned by household unincorporated enterprises, and used in production, are included as non-financial assets. For example a car used by a household purely for household transport is not a non-financial asset whereas a car used by a self-employed taxi driver is. Non-financial assets are valued at the market prices at the time of the balance sheet, and are recorded net of depreciation.

Comparability Information on non-financial assets held by households typically relies on household based surveys. As a consequence, the quality of this information, except for that pertaining to dwellings and land, is generally of lower

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Further information

Overview

Analytical publications

The non-financial assets of households in dwellings constitute a large share of household wealth. This indicator is of particular interest since the financial crisis because it may indicate risks of a speculative bubble.

• Babeau, A. and T. Sbano (2003), “Household Wealth in the National Accounts of Europe, the United States and Japan”, OECD Statistics Working Papers, No. 2003/02. • OECD (2015), Economic Policy Reforms, OECD Publishing.

In most OECD countries dwelling values per capita have grown steadily since 2010. In contrast, dwelling values per capita have fallen since 2010 in the Netherlands. The Netherland’s land values have also exhibited sizable declines in recent years (minus 10% in 2012 and minus 9.7% in 2013).

• OECD (2015), National Accounts at a Glance, OECD Publishing.

Only nine OECD countries currently provide data on land. For those countries reporting data the value of the land exceeds that of dwellings in 5 of them in 2013.

Statistical publications

Methodological publications • OECD, et al. (eds.) (2010), System of National Accounts 2008, United Nations, Geneva.

Online databases • OECD National Accounts Statistics.

Websites • National accounts, www.oecd.org/std/na.

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HOUSEHOLD INCOME AND WEALTH • HOUSEHOLD WEALTH NON-FINANCIAL ASSETS OF HOUSEHOLDS

Non-financial assets of households US dollars at current PPPs, per capita Dwellings

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Land

Other

2010

2011

2012

2013

2010

2011

2012

2013

2010

2011

2012

2013

44 748 48 602 49 853 38 617 12 976 26 575 37 431 23 446 42 709 55 254 53 494 44 516 24 321 .. .. 26 791 49 145 21 083 23 117 46 548 .. 53 266 .. .. 5 626 .. 31 836 28 367 .. 29 677 .. .. .. 50 256 .. .. .. .. .. .. .. ..

45 479 50 804 51 629 39 560 13 930 28 554 41 738 24 609 45 142 58 282 56 475 44 514 24 993 .. .. 28 532 52 164 21 645 23 927 48 939 .. 53 003 .. .. 5 775 .. 32 296 29 519 .. 30 534 .. .. .. 50 218 .. .. .. .. .. .. .. ..

46 291 52 312 53 280 41 261 13 998 28 226 42 083 24 213 47 617 58 939 58 551 44 676 24 991 .. .. 30 052 53 517 21 985 24 402 49 958 .. 51 881 .. .. 5 895 .. 32 767 30 440 .. 31 134 .. .. .. 51 190 .. .. .. .. .. .. .. ..

47 711 53 533 53 408 42 163 14 504 28 410 42 153 .. 48 108 59 891 59 648 .. .. .. .. 31 037 54 618 22 850 25 329 49 768 .. 50 849 .. .. .. .. 33 865 .. .. .. .. .. .. 54 214 .. .. .. .. .. .. .. ..

92 678 .. .. 35 659 .. 7 549 .. .. 21 335 63 576 .. .. .. .. .. .. .. 52 882 72 576 .. .. 53 982 .. .. .. .. .. .. .. .. .. .. .. 33 460 .. .. .. .. .. .. .. ..

86 630 .. .. 37 687 .. 8 044 .. .. 22 256 66 525 .. .. .. .. .. .. .. 53 479 76 634 .. .. 54 145 .. .. .. .. .. .. .. .. .. .. .. 33 785 .. .. .. .. .. .. .. ..

89 250 .. .. 39 448 .. 8 139 .. .. 22 850 62 926 .. .. .. .. .. .. .. 54 129 78 033 .. .. 48 740 .. .. .. .. .. .. .. .. .. .. .. 39 144 .. .. .. .. .. .. .. ..

98 839 .. .. 43 026 .. 8 267 .. .. 23 239 60 568 .. .. .. .. .. .. .. 53 928 78 994 .. .. 43 999 .. .. .. .. .. .. .. .. .. .. .. 46 095 .. .. .. .. .. .. .. ..

16 627 .. .. 1 869 .. 5 568 .. .. .. 7 194 .. .. .. .. .. .. .. 4 550 9 086 .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. ..

16 661 .. .. 1 903 .. 6 440 .. .. .. 7 408 .. .. .. .. .. .. .. 4 601 9 511 .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. ..

16 971 .. .. 1 827 .. 6 579 .. .. .. 7 202 .. .. .. .. .. .. .. 4 649 9 414 .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. ..

17 278 .. .. 1 843 .. 6 626 .. .. .. 7 033 .. .. .. .. .. .. .. 4 684 9 370 .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. .. ..

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Non-financial assets of households per capita: dwellings US dollars at current PPPs Australia

Canada

Czech Republic

France

Germany

United States

70 000 60 000 50 000 40 000 30 000 20 000 10 000 0

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GLOBALISATION TRADE SHARE OF INTERNATIONAL TRADE IN GDP INTERNATIONAL MERCHANDISE TRADE INTERNATIONAL TRADE IN SERVICES TRADE IN VALUE ADDED TRADE IN VALUE ADDED: ROLE OF INTERMEDIATES AND SERVICES

FDI AND BALANCE OF PAYMENTS FOREIGN DIRECT INVESTMENT FLOWS FOREIGN DIRECT INVESTMENT STOCKS FDI REGULATORY RESTRICTIVENESS INDEX BALANCE OF PAYMENTS

GLOBALISATION • TRADE

SHARE OF INTERNATIONAL TRADE IN GDP Trade

In today’s increasingly globalised world, exports and imports are key aggregates in the analysis of a country’s economic situation. Whenever an economy slows down or accelerates, all other economies are potentially affected through trade linkages.

good comparability across countries; although discrepancies between total imports and exports of traded goods at the global level reveal that measurement in practice is not trivial. Growth in trade through the Internet has increased measurement difficulties.

Definition

The comparability of trade in services is more affected by practical measurement issues however; even if the conceptual approach, as it is for goods, is the same for all OECD countries.

Exports of goods and services consist of sales, barter or gifts or grants, of goods and services (included in the production boundary of GDP) from residents to nonresidents. Equally, imports reflect the same transactions from non-residents to residents. Not all goods need to physically enter a country’s border to be recorded as an export or import. Transportation equipment, goods produced by residents in international waters sold directly to non-residents, and food consumed in ships or planes are but a few examples of transactions which may be recorded as exports or imports without physically crossing borders.

Increases in outsourcing, merchanting, processing services and transactions in intellectual property, such as software and artistic originals, have increased the difficulties inherent in the measurement of trade in services.

Equally not all goods that enter a country’s borders are necessarily imports or exports. Transportation equipment, goods sent abroad for minor processing (or which enter and leave a country in their original state and ownership) are examples of goods that cross borders but are not recorded as imports or exports.

Comparability Goods (merchandise trade) reflect the bulk of import and exports, and these are generally well covered and afford

Overview

Sources • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

International trade measured as the ratio of exports and imports to GDP increased for almost all OECD countries in 2010 and 2011, following sharp declines during the financial crisis. For 2010 and 2011, exports and imports as a share of GDP increased by more than 2 percentage points for the OECD total. The GDP ratio for imports fell in 15 countries in 2012 and fell even further in 2013 and 2014 for many OECD countries reflecting a weak demand for imported products as many economies slowed. However, the GDP ratio for exports also fell in 2012-14 but fewer countries saw declines as compared to the drops in the import share.

• OECD (2012), Policy Priorities for International Trade and Jobs, OECD Publishing. • OECD (2011), Globalisation, Comparative Advantage and the Changing Dynamics of Trade, OECD Publishing.

Looking at the balance of exports and imports in 2014, Luxembourg shows the largest surplus at 32.4% of GDP. Other countries showing a surplus greater than 10% are Ireland, the Netherlands and Switzerland, whereas N o r w ay, S l ov e n i a , H u n g a r y, G e r m a ny, t h e Czech Republic, Iceland, Denmark and Korea have trade surpluses of more than 5% of GDP. On the other hand Turkey, Japan, the United States and Greece have deficits of more than 2% of GDP.

Methodological publications

66

Further information Analytical publications

Statistical publications • OECD (2015), International Trade by Commodity Statistics, OECD Publishing. • OECD (2014), OECD Statistics on International Trade in Services, OECD Publishing. • OECD (2014), National Accounts at a Glance, OECD Publishing. • OECD, et al. (2010), Manual on Statistics of International Trade in Services, United Nations.

Websites • International Trade and Balance of Payments Statistics, www.oecd.org/std/its. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • TRADE SHARE OF INTERNATIONAL TRADE IN GDP

International trade in goods and services As a percentage of GDP Imports

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Exports

2009

2010

2011

2012

2013

2014

2009

2010

2011

2012

2013

2014

20.4 41.9 67.0 29.9 29.6 54.9 42.4 55.8 34.3 25.5 32.9 28.8 70.8 40.8 80.1 30.4 23.1 12.3 42.9 136.5 28.8 55.8 26.6 27.9 38.3 34.0 69.3 55.4 23.8 38.7 49.9 24.4 29.2 13.8 33.4 33.8 24.3 11.3 22.3 25.0 21.1 20.5 27.5

20.1 47.7 74.7 31.0 31.7 63.1 43.6 68.7 37.4 27.9 37.1 30.7 77.0 43.5 87.1 32.8 27.1 14.0 46.2 147.1 31.1 63.6 28.2 28.6 42.1 37.4 78.0 62.9 26.8 40.7 53.5 26.8 31.3 15.8 37.5 37.6 27.0 11.8 25.6 .. 22.4 21.1 27.4

21.5 51.2 81.1 31.8 34.9 67.7 47.4 80.8 40.0 30.4 39.9 32.3 81.1 48.6 83.3 35.4 28.6 16.0 54.3 154.8 32.6 68.8 29.2 28.5 44.5 38.6 86.2 68.5 29.2 42.0 57.3 32.6 32.3 17.3 40.4 40.3 29.4 12.2 25.9 .. 23.9 21.7 29.6

21.1 51.2 81.7 32.1 34.5 71.7 48.6 85.6 40.9 30.7 39.9 33.1 80.1 50.9 90.0 35.6 27.6 16.7 53.5 158.9 33.8 72.3 28.5 27.7 44.9 38.2 88.1 69.1 29.1 41.4 56.9 31.5 32.2 17.1 40.9 40.6 29.3 .. 24.5 .. 25.0 22.3 31.0

21.3 50.2 80.9 31.8 33.1 71.5 48.5 84.6 39.8 30.4 39.5 33.4 80.7 47.7 87.4 31.4 26.5 19.0 48.9 161.9 32.7 71.6 27.6 28.6 44.4 38.5 89.6 69.3 28.7 39.3 60.2 32.2 32.0 16.6 40.5 40.2 29.0 .. 23.8 .. 24.8 22.7 33.2

21.2 49.5 83.1 32.5 32.3 77.1 48.3 80.5 38.7 30.5 39.0 35.2 82.0 47.4 95.4 30.6 26.5 20.8 45.3 170.9 33.5 71.5 27.4 29.6 46.2 39.7 88.2 68.7 30.1 40.8 53.0 32.2 30.3 16.6 40.7 40.2 29.1 .. .. .. 24.5 22.9 33.1

19.5 44.9 69.3 28.4 37.2 58.8 46.7 60.8 36.3 24.1 37.8 19.0 74.8 49.8 93.6 33.3 22.5 12.7 47.5 166.5 27.3 63.2 29.0 39.2 37.6 27.1 67.8 57.2 22.7 44.5 57.4 23.3 26.8 11.0 34.8 34.8 24.0 10.9 26.7 19.8 23.6 27.9 27.9

21.2 51.0 76.4 29.1 38.1 66.2 49.7 75.1 38.7 26.0 42.3 22.1 82.3 53.7 103.1 35.0 25.2 15.2 49.4 179.0 29.9 72.0 30.5 39.8 40.0 29.9 76.6 64.3 25.5 46.2 64.2 21.2 28.6 12.4 38.9 38.5 26.3 10.7 29.4 .. 24.3 29.2 28.6

21.3 53.7 81.6 30.6 38.1 71.6 52.9 86.5 39.2 27.8 44.8 25.5 87.2 56.6 101.2 36.1 27.0 15.1 55.7 185.6 31.3 77.4 30.8 41.3 42.5 34.3 85.3 70.4 28.9 46.7 65.8 24.0 30.7 13.6 41.8 41.4 28.3 11.5 28.5 .. 26.3 30.3 30.4

19.9 53.8 82.3 30.2 34.3 76.6 54.0 86.6 39.5 28.5 46.0 28.7 86.8 57.0 107.2 36.9 28.6 14.7 56.3 189.2 32.7 81.9 29.2 40.6 44.4 37.7 91.8 73.3 30.6 46.3 67.3 26.3 30.1 13.6 43.6 42.6 28.7 .. 27.3 .. 24.6 29.5 29.7

20.9 53.2 82.2 30.2 32.4 77.3 54.3 86.8 39.0 28.5 45.5 30.6 88.0 55.7 106.7 33.2 28.9 16.2 53.9 195.6 31.8 82.6 29.3 38.8 46.3 39.5 93.8 75.2 32.0 43.8 72.3 25.6 30.0 13.6 43.9 42.9 28.7 .. 26.2 .. 24.0 28.6 31.0

20.8 53.2 84.0 31.6 33.8 83.8 53.7 83.9 37.9 28.7 45.7 32.7 89.3 53.6 113.7 32.3 29.6 17.7 50.6 203.3 32.6 82.9 29.2 38.3 47.4 40.0 91.9 76.5 32.5 44.5 64.3 27.7 28.4 13.5 44.5 43.0 28.9 .. .. .. 23.7 30.0 31.3

1 2 http://dx.doi.org/10.1787/888933336720

International imports and exports in goods and services As percentage of GDP, 2014 or latest available year Imports 100

Exports 114 171203

90 80 70 60 50 40 30 20 10 0

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GLOBALISATION • TRADE

INTERNATIONAL MERCHANDISE TRADE For the majority of countries, international merchandise trade flows have grown steadily over the long term. However, in the recent years since the economic crisis, trade growth has remained flat, raising questions about the role of international trade as a driver of growth, and whether the slowdown is structural or pro-cyclical.

Definition According to United Nations guidelines, international merchandise trade statistics record all goods which add to, or subtract from, the stock of material resources of a country by entering (as imports) or leaving (as exports) its economic territory. Goods being transported through a country or temporarily admitted or withdrawn (except for goods for inward or outward processing) are not included in merchandise trade statistics. All OECD countries use the United Nations guidelines to the extent that their data sources allow. There are some, generally minor, differences across countries in the coverage of certain types of transactions such as postal trade, imports and exports of military equipment under defence agreements, sea products traded by domestic vessels on the high seas and goods entering or leaving bonded customs areas.

Overview For a substantial number of OECD countries, notably in Europe, total imports in 2014 (in current US dollars) were below those recorded in 2011, reflecting a combination of an appreciating US dollar, lower oil prices, and weak domestic demand. In the United States and the United Kingdom, merchandise imports grew, but only modestly compared to earlier periods. Merchandise exports likewise remained stable in the recent years. Petroleum exporters such as Brazil and Russia, saw their trade values decline, especially in 2014, in light of the drop in oil prices. In contrast, the European countries most severely affected by the crisis (Greece, Spain, Portugal and Italy) noted modest merchandise trade growth rates since 2010. Overall, the merchandise trade balance deteriorated in several OECD countries in recent years, for instance in the United States, the United Kingdom, France and Turkey. However, Germany, Korea, the Netherlands, China and Russia have continued to run a merchandise trade surplus. The Japanese merchandise trade balance has deteriorated sharply since 2011, resulting in annual trade deficits for these years after 30 years of surpluses. This reversal is related to the rise in energy imports in the aftermath of the tsunami and earthquake in 2011.

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Comparability Exports are usually valued free on board (f.o.b.), with the exception of the United States which values exports free alongside ship (f.a.s.), which is lower than f.o.b. by the cost of loading the goods on board. Imports are valued by most countries at cost, insurance and freight (c.i.f.) i.e. the cost of the goods plus the costs of insurance and freight to bring the goods to the borders of the importing country. Canada, however, reports imports at f.o.b. values. The introduction by the European Union of the single market in 1993 resulted in a loss of accuracy for intra-EU trade because custom documents were no longer available to record all imports and exports. Note that while the OECD data mostly follow the UN recommendations, trade statistics reported by Eurostat follow Community definitions, and are not strictly comparable. The OECD aggregate includes all 34 members only from 1999. The EU28 aggregate excludes Croatia.

Sources • OECD (2015), International Trade by Commodity Statistics, OECD Publishing. • United Nations (2013), United Nations Commodity Trade Statistics (Database).

Further information Analytical publications • OECD (2011), Globalisation, Comparative Advantage and the Changing Dynamics of Trade, OECD Publishing. • OECD (2006), Aid for Trade: Making it Effective, The Development Dimension, OECD Publishing.

Statistical publications • OECD (2014), Monthly Statistics of International Trade, OECD Publishing.

Methodological publications • OECD (2015), International Trade by Commodity Statistics, OECD Publishing. • United Nations, et al. (2011), International Merchandise Trade Statistics: Concepts and Definitions (IMTS 2010), United Nations.

Online databases • International Trade by Commodity Statistics. • Monthly Statistics of International Trade.

Websites • International Trade and Balance of Payments Statistics, www.oecd.org/std/its. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • TRADE INTERNATIONAL MERCHANDISE TRADE

International trade in goods Billion US dollars Trade balance

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Imports

Exports

2000

2005

2010

2014

2000

2005

2010

2014

2000

2005

2010

2014

-4.0 -5.2 10.8 37.6 1.6 -3.2 5.2 -1.2 11.6 -8.5 54.8 -18.8 -4.0 -0.7 25.6 -4.3 1.9 99.6 11.8 -2.8 -13.1 5.4 -0.6 25.5 -17.2 -15.6 -0.9 -1.4 -39.5 14.2 -2.0 -26.7 -56.6 -477.7 .. -398.4 -0.7 24.1 -10.6 28.6 69.2 -0.5

-12.8 -2.2 13.8 46.1 9.0 1.7 8.3 -2.8 6.8 -41.6 197.3 -37.4 -3.6 -1.9 39.7 -2.3 -11.9 79.1 23.2 -4.9 -7.6 36.9 -4.5 48.3 -12.2 -23.1 -2.4 -1.7 -96.8 18.9 4.4 -43.3 -131.4 -828.0 -155.4 -738.8 44.9 102.0 -40.5 28.0 142.7 -8.0

18.6 -5.7 21.0 -5.5 11.5 6.5 12.3 -0.4 1.4 -87.5 204.3 -41.8 7.3 0.7 57.8 -0.8 -39.9 75.7 41.2 -6.5 -3.2 52.7 0.8 54.1 -17.1 -26.5 -0.4 -2.2 -70.6 9.6 19.3 -71.6 -156.6 -689.4 -231.2 -630.7 16.9 181.8 -129.6 22.1 168.2 -0.3

12.9 -2.7 19.4 10.9 4.3 21.1 11.2 -2.5 -2.4 -93.2 287.3 -26.4 9.2 -0.3 47.2 -3.4 56.7 -138.4 47.5 -9.2 -2.9 63.3 -0.9 53.7 -2.2 -14.2 4.6 0.5 -32.3 1.9 36.1 -84.5 -183.2 -726.3 .. -637.3 -4.0 384.3 -141.8 -2.1 211.2 -9.3

67.8 67.4 177.0 240.0 16.6 32.2 44.4 5.1 33.9 304.0 495.4 29.8 32.1 2.6 50.6 35.7 238.1 379.7 160.5 10.6 179.4 174.7 13.9 34.4 48.8 39.9 12.7 10.1 152.9 73.1 82.5 54.5 339.4 1 258.1 .. 4 898.0 55.9 225.1 52.9 33.5 33.9 26.8

118.9 120.0 320.2 314.4 32.9 76.5 75.0 11.0 58.5 476.0 779.8 54.9 65.9 5.0 70.3 45.0 384.8 515.9 261.2 17.6 221.8 283.2 26.2 55.5 101.5 61.2 34.2 19.6 289.6 111.4 126.6 116.8 515.8 1 732.3 1 465.5 7 499.6 73.6 660.0 140.9 57.7 98.7 55.0

193.3 150.6 390.1 392.1 59.4 125.7 84.5 13.2 68.8 599.2 1 066.8 63.3 87.4 3.9 60.5 59.2 486.6 694.1 425.2 20.4 301.5 440.0 30.2 77.3 174.1 75.2 64.4 26.4 318.2 148.8 176.3 185.5 562.4 1 966.5 2 026.9 9 590.9 180.5 1 396.0 350.0 135.7 228.9 82.9

227.5 172.4 452.8 462.0 72.3 153.2 99.6 20.1 76.8 659.9 1 223.8 62.2 103.2 5.4 71.0 72.3 471.7 822.3 525.6 23.9 400.0 508.0 42.5 89.2 216.7 78.1 81.4 30.0 351.0 162.5 275.1 242.2 694.3 2 346.0 .. 11 295.0 229.1 1 958.0 459.4 178.2 286.6 99.9

63.8 62.3 187.8 277.6 18.2 29.1 49.6 3.8 45.5 295.6 550.2 11.0 28.1 1.9 76.3 31.4 239.9 479.2 172.3 7.9 166.3 180.1 13.3 59.9 31.6 24.4 11.8 8.7 113.3 87.4 80.5 27.8 282.9 780.3 .. 4 499.5 55.1 249.2 42.4 62.1 103.1 26.3

106.0 117.7 334.0 360.6 42.0 78.2 83.3 8.2 65.2 434.4 977.1 17.5 62.3 3.1 110.0 42.8 373.0 594.9 284.4 12.7 214.2 320.1 21.7 103.8 89.4 38.1 31.9 17.9 192.8 130.3 130.9 73.5 384.4 904.3 1 310.1 6 760.7 118.5 762.0 100.4 85.7 241.5 47.0

211.8 144.9 411.1 386.6 70.9 132.1 96.8 12.8 70.1 511.7 1 271.1 21.6 94.7 4.6 118.3 58.4 446.8 769.8 466.4 13.9 298.3 492.6 30.9 131.4 157.1 48.8 64.0 24.2 247.6 158.4 195.6 114.0 405.8 1 277.1 1 795.8 8 960.2 197.4 1 577.8 220.4 157.8 397.1 82.6

240.4 169.7 472.2 472.9 76.6 174.3 110.7 17.6 74.3 566.7 1 511.1 35.8 112.4 5.1 118.3 69.0 528.4 683.8 573.1 14.7 397.1 571.3 41.6 142.8 214.5 64.0 86.0 30.5 318.6 164.3 311.1 157.7 511.1 1 619.7 .. 10 657.7 225.1 2 342.3 317.5 176.0 497.8 90.6

1 2 http://dx.doi.org/10.1787/888933336374

Evolution of the merchandise trade balance Annual growth rate in percentage China

Germany

Japan

United States

EU28

OECD

220 180 140 100 60 20 -20 -60 -100 -140 -180

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GLOBALISATION • TRADE

INTERNATIONAL TRADE IN SERVICES International trade in services is growing in importance both among OECD countries and in the rest of the world. Traditional services – transport, insurance on merchandise trade, and travel – account for about half of international trade in services, but trade in newer types of services, particularly those that can be conducted via the Internet, is growing rapidly.

Comparability

Definition

A stricter application of the change of ownership principle means that that goods sent abroad for processing are excluded from exports and imports in the goods accounts. Instead, the exchange of processing fees is recorded under services in the economies concerned: the outward processing economy recording payment of fees as imports of services, the inward processing economy recording the receipt of fees as exports of services.

International trade in services is defined according to the International Monetary Fund (IMF) Balance of Payments and International Investment Manual as well as by the Manual on Statistics on International Trade in Services. Services include: manufacturing services on physical inputs owned by others; maintenance and repair services n.i.e.; transport; travel (mainly expenditure on goods and services by tourists and business travellers); construction; insurance and pension services; financial services; charges for the use of intellectual property n.i.e.; telecommunications, computer and information services; other business services (research and development services, operational leasing, technical and professional services, etc.); personal cultural and recreational services (rents for films, fees for actors and other performers, but excluding purchases of films, recorded music, books, etc.); and government goods and services n.i.e.

Almost all OECD countries now report international trade in services broadly according to the Balance of Payments and International Investment Manual, Sixth Edition (BPM6) framework. Two recent changes introduced with BPM6 are worth highlighting here.

To improve consistency on international merchandise and services trade statistics, purchase of goods under merchanting arrangements are registered as negative exports with subsequent sales registered as exports; the difference reflecting the merchanting margin, with all transactions recorded on the goods account. Previously the margin was recorded on the services account. Both changes create differences between the balance of payments goods statistics and merchandise trade statistics.

Overview Between 2010 and 2014 international trade in services in the OECD area grew significantly (imports by 22% and exports by 24%) despite the backdrop of slow global economic growth and low growth in merchandise trade. The United States, by some distance in 2014, was the largest exporter of international trade in services at 710.6 million USD, followed by the United Kingdom (361.7 million USD), Germany (277.7 million USD) and France (276.0 million USD). China, (232.0 million USD) emerged as the fifth largest exporter in the word, following a near doubling (up 97%) since 2010. Measuring exports of international trade in services as a percentage of total exports in international trade in services and goods provides a picture of the relative importance of services in international trade. Amongst larger OECD countries, the percentage increased significantly, for example, in the United Kingdom (from around 30% in 1999 to just over 40% in 2014). Although growth in other major economies was less dramatic, this in part reflects the increasing services content of goods exports, and the growing knowledge content of goods, i.e. an increased blurring between goods and services.

70

Sources • OECD (2015), Main Economic Indicators, OECD Publishing. • OECD (2014), OECD Statistics on International Trade in Services, OECD Publishing.

Further information Analytical publications • OECD (2012), Strategic Transport Infrastructure Needs to 2030, OECD Publishing.

Statistical publications • OECD (2015), International Trade by Commodity Statistics, OECD Publishing.

Methodological publications • OECD, et al. (2010), Manual on Statistics of International Trade in Services, United Nations.

Websites • International trade and balance of payments statistics, www.oecd.org/std/trade-services. • Services Trade Restrictiveness Index (STRI), www.oecd.org/ trade/stri. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • TRADE INTERNATIONAL TRADE IN SERVICES

International trade in services Billion US dollars Trade balance

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Imports

Exports

2000

2010

2013

2014

2000

2010

2013

2014

2000

2010

2013

2014

0.6 .. 1.9 -2.8 .. 4.2 .. 0.7 -1.8 12.1 -53.8 .. 2.5 0.0 .. 3.9 0.6 -48.8 -1.0 7.2 -3.6 .. 0.7 .. .. 2.9 .. 0.6 19.9 -3.9 15.2 11.3 20.1 74.3 .. .. .. .. .. .. -5.0 -0.8

-4.9 13.7 10.8 -21.5 -1.9 4.1 6.8 1.8 0.2 20.4 -36.4 16.1 3.5 0.8 -19.5 6.6 -12.1 -30.3 -14.2 16.8 -10.6 -9.8 1.3 -1.1 4.4 8.6 -0.9 1.6 44.9 6.9 25.5 16.6 83.9 154.0 .. 286.1 -30.0 -23.4 42.5 -9.8 -26.1 -4.5

-14.5 13.5 8.5 -22.6 -3.4 3.6 8.8 1.8 -1.9 29.7 -59.4 20.9 5.3 1.2 -2.1 13.6 0.9 -35.5 -6.5 21.6 -11.0 -7.3 0.8 -7.7 10.1 14.7 0.5 2.3 63.3 12.3 22.0 22.8 126.6 224.2 .. 457.2 -46.2 -123.5 70.5 -12.1 -58.3 ..

-9.4 13.9 6.9 -21.2 -3.8 2.7 10.6 2.2 -2.4 23.7 -53.0 24.2 6.8 1.2 -11.7 12.9 -1.7 -29.3 -8.2 22.9 -12.5 -4.9 1.2 -6.7 11.4 15.2 0.1 2.3 64.3 9.2 20.0 25.2 146.1 233.1 .. 491.3 -48.1 -151.0 75.9 -10.0 -55.3 ..

19.3 .. 35.5 43.0 .. 5.6 .. 0.9 10.1 84.8 137.0 .. 4.9 1.1 .. 12.3 58.7 118.2 33.6 13.7 17.1 .. 4.5 .. .. 6.4 .. 1.7 33.0 24.6 30.7 8.1 103.6 216.1 .. .. .. .. .. .. 16.3 5.8

51.5 38.8 87.7 98.4 13.0 17.8 54.7 2.9 28.8 181.7 263.3 21.7 15.9 2.2 109.6 18.8 113.1 164.7 97.5 45.6 25.8 134.5 10.3 42.8 31.1 14.3 7.3 4.6 68.2 47.4 69.3 19.6 185.1 409.3 .. 2 497.2 60.8 140.9 81.4 26.5 75.3 18.5

68.0 51.0 104.0 112.6 15.9 20.4 62.4 4.7 31.5 226.6 326.0 16.3 17.3 2.8 123.6 20.8 110.8 170.9 110.2 67.4 31.2 151.9 12.6 56.4 34.5 14.5 8.6 4.7 63.2 60.7 92.4 23.8 209.2 463.7 .. 2 890.8 84.4 330.4 78.1 35.0 128.4 ..

63.5 53.3 117.0 107.9 14.7 22.5 62.3 4.8 30.5 252.3 330.8 17.0 17.9 3.1 145.1 22.5 115.8 192.3 115.0 77.1 33.5 159.9 13.2 56.1 36.8 16.1 9.0 5.1 68.4 65.9 98.6 25.4 215.6 477.4 .. 3 046.5 88.1 383.0 80.4 33.5 121.0 ..

19.9 .. 37.4 40.2 .. 9.8 .. 1.6 8.3 96.9 83.2 .. 7.4 1.1 .. 16.3 59.3 69.4 32.7 20.9 13.5 .. 5.2 .. .. 9.4 .. 2.4 53.0 20.7 45.9 19.4 123.7 290.4 .. .. .. .. .. .. 11.3 5.0

46.6 52.5 98.4 76.9 11.1 21.9 61.5 4.7 29.0 202.1 226.9 37.8 19.4 3.0 90.2 25.4 101.0 134.4 83.3 62.4 15.2 124.6 11.6 41.7 35.5 22.8 6.4 6.2 113.1 54.3 94.8 36.2 269.0 563.3 .. 2 783.4 30.8 117.5 123.9 16.7 49.2 14.0

53.4 64.5 112.5 90.1 12.5 24.0 71.2 6.5 29.6 256.4 266.6 37.2 22.6 4.0 121.5 34.5 111.7 135.2 103.7 89.0 20.2 144.6 13.5 48.7 44.6 29.2 9.1 7.1 126.4 73.0 114.4 46.6 335.8 687.9 .. 3 347.8 38.2 206.9 148.6 22.9 70.1 ..

54.2 67.3 123.9 86.7 11.0 25.1 72.8 7.1 28.1 276.0 277.7 41.2 24.7 4.3 133.4 35.4 114.1 163.2 106.9 99.9 21.1 155.0 14.4 49.4 48.1 31.3 9.1 7.4 132.7 75.1 118.5 50.6 361.7 710.6 .. 3 537.9 40.0 232.0 156.3 23.5 65.7 ..

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Exports of services as a percentage of total exports of goods and services Percentage Germany

Japan

United Kingdom

United States

45 40 35 30 25 20 15 10 5 0

1995

1996

1997

1998

1999

2000

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

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GLOBALISATION • TRADE

TRADE IN VALUE ADDED Trade in value added data are statistical estimates of the source(s) of the value (by country and industry) that is added in producing goods and services for export (and import). It recognises that growing global value chains mean that a country's exports increasingly rely on significant intermediate imports (and, so, value added by industries in upstream countries). The consequence of the significant growth in global value chains is a multiple counting of trade in intermediates that may distort trade policy analysis.

foreign final consumers (households, charities, government, and as investment).

The joint OECD-WTO Trade in Value Added (TiVA) initiative addresses this issue by considering the value added by each country in the production of goods and services that are consumed worldwide.

The indicators in the TiVA database are estimates. The inter-country input-output tables from which the TiVA indicators are derived by necessity have to eliminate inconsistencies within and between official national statistics, and balance bilateral trade asymmetries to achieve a coherent picture of global production, trade and consumption of goods and services. This means that while for the countries for which data is presented, all data (including total exports and imports) are made consistent with official national accounts estimates, the bilateral trade positions presented in TiVA and those published by national statistics institutions may differ.

Definition The OECD-WTO database includes a number of indicators that help to better understand the nature of global value chains and how value and where value is created. These indicators are derived from an inter-country input-output table that is constructed by combining national inputoutput tables and international trade in goods and services statistics, and benchmarked to countries’ latest national accounts figures.

Foreign value added embodied in final domestic demand shows how much value added in final goods and services (purchased by households, government, non-profit institutions serving households and as investment) originates from abroad.

Comparability

The share of foreign value added embedded in exports reflects how much of a country’s gross exports contains value added that is produced outside the domestic economy (and imported). Domestic value added embodied in foreign final demand shows how much domestic value added is included, via direct final exports and via indirect exports of intermediates through other countries, in the demand of

Overview The foreign value added content of exports has generally increased over the past two decades, up to a weighted OECD average of 24.3%. Yet economies differ significantly in this respect. The share of foreign value added in exports clearly depends on economies’ size and pattern of specialisation. Smaller economies tend to have higher shares of foreign value added embodied in their exports; larger economies have a wider variety of domestically sourced intermediate goods available and are therefore less reliant on foreign imports of intermediaries. In particular, for Asian countries like India and Korea, but also for Poland, Hungary, Turkey and Luxembourg, the share of foreign value added in exports has increased substantially since the mid-1990s. The strong effects of the economic crisis has had on international trade is also evident in the decline of the share of foreign value added in gross exports from 2008 to 2009. This share recovered in 2011.

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Sources • OECD/WTO (2016), OECD-WTO: Statistics on Trade in Value Added (Database).

Further information Analytical publications • OECD (2013), Interconnected economies: Benefiting from Global Value Chains, OECD Publishing. • De Backer, K. and N. Yamano (2012), “International Comparative Evidence on Global Value Chains”, OECD Science, Technology and Industry Working Papers, No. 2012/03, OECD Publishing.

Statistical publications • OECD (2014), OECD Statistics on International Trade in Services, OECD Publishing.

Methodological publications • OECD (2012), “Trade in Value-Added: Concepts, Methodologies, and Challenges (Joint OECD-WTO Note)”, Paris.

Websites • Measuring Trade in Value Added: An OECD-WTO joint initiative, www.oecd.org/trade/valueadded. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • TRADE TRADE IN VALUE ADDED

Foreign value added as a share of gross exports Percentage Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

1995

2000

2005

2008

2009

2010

2011

12.1 21.4 31.0 24.4 13.9 30.6 23.2 36.0 24.2 17.3 14.9 16.4 29.9 17.4 38.5 21.9 17.2 5.6 22.3 41.0 27.3 23.2 16.9 19.9 16.1 27.4 31.9 32.3 19.2 26.3 17.6 8.9 18.3 11.5 19.2 14.9 7.8 33.4 9.4 12.6 13.3 13.2

15.9 24.8 34.4 27.0 21.7 38.7 26.1 44.6 30.6 22.8 20.2 23.9 51.6 24.2 43.0 21.0 20.0 7.4 29.8 52.9 34.4 22.5 22.2 16.1 24.0 30.2 44.2 36.5 25.8 29.2 21.3 13.1 18.1 12.6 23.5 18.1 11.5 37.3 11.3 17.4 18.3 17.8

12.2 26.5 31.3 23.5 18.9 42.6 27.7 42.7 31.8 23.4 21.3 21.3 48.1 29.0 41.9 26.0 22.0 11.1 33.0 54.7 33.0 18.6 15.6 15.9 28.3 31.8 47.2 37.9 26.3 29.1 25.9 21.0 17.1 13.1 24.4 20.8 11.7 37.4 17.5 16.6 12.8 19.5

13.8 28.1 36.6 22.8 24.7 42.3 34.1 33.0 33.6 24.8 24.8 25.3 46.4 29.6 43.6 27.0 25.8 15.8 41.8 58.9 32.8 19.6 18.7 16.2 31.1 33.8 46.5 36.2 27.6 32.1 22.9 25.0 19.5 15.6 27.6 24.6 12.5 31.8 22.7 14.6 13.9 23.8

13.1 24.7 30.6 22.3 18.8 40.2 30.7 28.4 30.6 21.6 21.9 20.7 45.0 30.4 42.0 22.0 21.2 11.2 37.5 55.2 33.6 17.8 15.2 17.5 27.1 28.6 43.6 31.1 22.2 28.7 21.4 21.6 18.9 11.6 24.5 21.2 10.0 30.8 21.0 11.1 12.7 18.8

13.0 26.4 30.9 23.4 17.8 44.1 29.9 33.0 31.8 23.7 23.3 21.8 48.9 31.2 43.7 23.6 25.0 12.7 39.2 57.5 34.5 19.4 16.1 17.7 31.3 31.6 45.9 34.9 24.8 28.9 22.1 22.6 21.1 13.4 26.4 22.5 10.3 32.0 22.3 11.1 13.1 17.9

14.1 27.8 34.5 23.5 20.2 45.3 32.6 35.2 34.7 25.1 25.5 25.0 48.7 33.2 43.6 25.3 26.5 14.7 41.7 59.0 31.7 20.1 16.7 17.2 32.4 32.8 46.8 36.2 26.9 29.2 21.8 25.7 23.1 15.0 28.2 24.3 10.8 32.2 24.1 12.0 13.7 19.5

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Value added in domestic and foreign final demand Billion US dollars, 2011 Domestic value added embodied in foreign final demand

Foreign value added embodied in domestic final demand 1 509 2 086

1 400 1 200 1 000 800 600 400 200 0

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GLOBALISATION • TRADE

TRADE IN VALUE ADDED: ROLE OF INTERMEDIATES AND SERVICES The data on Trade in Value Added (TiVA) highlight the significance of intermediate imports used in producing goods and services for export in many economies. They emphasise that being competitive on international markets requires access to the most efficient inputs – either domestically produced or imported – and that tariffs on imports can harm the competitiveness of downstream exporters. The data also stress the important role played by upstream services in producing exports of goods, and, so, the importance of ensuring that producers have access to the most efficient services (again either domestically produced or imported).

Definition Re-exported intermediates reflect the share of intermediate imports that are used (indirectly and directly) in producing goods and services for exports, as a percentage of total intermediate imports (by import category).

Total services value added embodied in gross exports shows the total value added provided by the services sector in generating direct exports of services and also embodied in the exports of goods using intermediate services. The indicator contains a breakdown showing the contributions from domestic or foreign services.

Comparability The indicators in the TiVA database are estimates. The global input-output tables from which the TiVA indicators are derived by necessity have to eliminate inconsistencies within and between official national statistics, and balance bilateral trade asymmetries to achieve a coherent picture of global production, trade and consumption of goods and services. This means that while for the countries for which data is presented, all data (including total exports and imports) are made consistent with official national accounts estimates, the bilateral trade positions presented in TiVA and those published by national statistics institutions may differ.

Overview On average, 45% of intermediate imports are destined for the export market in 2011. Not surprisingly, the smaller the economy the higher the share, while the larger and more diversified economies see relative low share of imports in intermediates. The United States and Japan have the lowest such shares amongst OECD countries, at 20.6% and 20.4% respectively for the total economy, with noticeably higher percentages for some sectors. In Japan for example for basic metals and fabricated metal products, transport equipment and electrical and optical equipment sectors, around 35% of intermediate imports end up in exports. In other countries, the share of intermediate imports embodied in exports is significantly higher. In Hungary for example, over 70% of all intermediate imports are destined for the export market after further processing, w i t h t h e s h a re re a ch i n g 8 8 . 6 % f o r e l e c t ron i c intermediate imports in 2011. In China and Korea, around two thirds of all intermediate imports of electronics are embodied in exports. The TiVA database also reveals that close to 90% of China’s intermediate imports of textile products end up in exports. While services comprise about two-thirds of GDP in most developed economies, they typically account for just over one-quarter of total gross trade in goods and services in OECD countries. However, from a trade in va l u e a d d e d p e r s p e c t ive, t h e s e r v i c e s s e c t o r c o n t r i b u t e s ove r 5 0 % o f t o t a l ex p o r t s i n t h e United States, the United Kingdom, France, Germany and Italy, and more than 40% in China, and services are provided by both foreign and domestic service providers.

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Sources • OECD/WTO (2016), OECD-WTO: Statistics on Trade in Value Added (Database).

Further information Analytical publications • OECD (2013), Interconnected economies: Benefiting from Global Value Chains, OECD Publishing. • Beltramello, A., K. De Backer and L. Moussiegt (2012), “The Export Performance of Countries within Global Value Chains (GVCs)”, OECD Science, Technology and Industry Working Papers, No. 2012/02, OECD Publishing. • De Backer, K. and N. Yamano (2012), “International Comparative Evidence on Global Value Chains”, OECD Science, Technology and Industry Working Papers, No. 2012/03, OECD Publishing.

Methodological publications • OECD (2012), “Trade in Value-Added: Concepts, Methodologies, and Challenges (Joint OECD-WTO Note)”, Paris.

Websites • Measuring Trade in Value Added: An OECD-WTO joint initiative, www.oecd.org/trade/valueadded. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • TRADE TRADE IN VALUE ADDED: ROLE OF INTERMEDIATES AND SERVICES

Re-exported intermediates as percentage of total intermediate imports by selected industries Percentage, 2011 Agriculture, hunting, forestry and fishing Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

25.2 40.7 38.1 31.1 33.2 38.1 50.0 52.8 38.3 27.4 27.1 20.3 50.1 72.6 67.9 13.6 25.3 7.0 16.1 89.3 13.4 40.3 47.7 31.1 31.0 33.6 51.3 37.7 30.2 41.6 27.9 14.1 22.7 15.5 31.7 23.9 21.9 34.8 14.9 16.7 11.5 17.1

Food products, beverages and tobacco 18.7 37.7 37.9 23.6 28.5 35.7 46.5 47.2 28.8 24.6 25.1 23.0 49.3 63.6 64.4 19.5 25.1 6.0 13.1 74.8 19.9 38.0 46.2 32.8 31.3 27.4 42.9 36.4 27.1 34.2 30.3 17.5 20.3 10.6 29.5 23.4 14.2 36.3 18.2 11.9 14.3 19.6

Textiles, textile products, leather and footwear 19.5 53.4 43.9 35.4 24.8 64.5 44.5 65.5 45.7 48.4 50.8 37.5 80.1 63.0 59.3 53.6 46.9 17.4 39.9 80.8 63.4 34.6 37.1 36.3 54.5 57.5 75.6 67.3 48.0 47.6 50.4 28.0 37.8 21.0 50.0 37.4 11.2 88.3 27.3 30.9 21.7 22.4

Wood paper, paper Chemicals and products, printing non-metallic mineral and publishing products 14.4 45.7 41.2 27.1 32.2 57.5 36.3 51.9 40.3 28.3 38.4 26.9 59.0 24.7 63.6 51.4 31.2 12.0 36.1 86.1 42.4 31.7 28.4 24.6 41.0 42.5 54.7 57.5 31.5 43.3 44.5 21.4 27.2 15.3 37.0 29.9 16.7 49.3 23.0 20.8 27.7 24.6

20.7 45.7 56.1 35.5 35.3 65.3 54.7 51.0 46.1 40.2 50.7 35.6 67.5 44.3 68.9 52.5 39.7 20.7 52.9 84.6 40.7 47.9 29.6 45.6 44.5 44.3 68.4 58.5 41.3 51.7 52.9 25.4 39.2 20.3 46.4 38.6 17.3 48.3 26.3 16.9 37.3 29.3

Basic metals and fabricated metal products 26.7 64.4 57.7 53.8 43.0 75.2 44.0 58.5 62.7 44.9 64.8 37.0 72.8 70.3 64.6 49.7 57.8 36.8 56.6 83.5 69.0 39.6 32.8 65.2 58.9 56.6 75.4 71.7 50.5 66.6 59.2 36.4 56.2 30.6 58.5 50.5 20.1 54.3 16.5 10.9 54.4 31.4

Machinery and equipment 35.2 65.1 47.6 37.0 36.8 63.4 61.5 60.3 55.8 41.7 60.4 29.7 80.5 50.9 70.4 50.5 50.6 32.5 49.9 85.0 71.7 39.1 36.9 50.9 57.1 52.0 65.9 58.1 42.5 57.7 57.2 26.8 48.8 23.4 54.1 42.2 22.3 48.1 24.2 21.4 30.1 43.3

Transport equipment

Transport and storage, post and telecommunication

25.6 64.2 58.1 71.3 25.4 74.6 63.1 61.3 53.8 52.2 60.7 30.3 84.5 82.0 74.0 46.1 46.3 35.1 58.6 86.7 63.4 38.1 29.4 41.8 67.0 69.2 88.1 73.5 64.8 66.6 55.6 35.6 43.5 24.9 58.3 50.2 15.0 26.5 29.9 16.2 30.0 31.2

Business services

25.6 64.2 58.1 71.3 25.4 74.6 63.1 61.3 53.8 52.2 60.7 30.3 84.5 82.0 74.0 46.1 46.3 35.1 58.6 86.7 63.4 38.1 29.4 41.8 67.0 69.2 88.1 73.5 64.8 66.6 55.6 35.6 43.5 24.9 58.3 50.2 15.0 26.5 29.9 16.2 30.0 31.2

23.9 44.8 48.1 31.8 37.8 53.5 53.5 57.0 43.8 34.2 44.4 36.9 63.7 67.4 70.4 42.6 34.5 17.7 49.1 92.4 47.0 38.0 31.3 41.8 42.3 41.1 59.4 53.2 35.7 47.7 52.1 25.8 33.2 16.0 44.8 37.4 16.2 48.7 28.1 18.7 31.8 32.6

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Total domestic and foreign services value added embodied in gross exports As a percentage of gross exports, 2011 Domestic value added share of gross export

Foreign value added share of gross export

90 80 70 60 50 40 30 20 10 0

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GLOBALISATION • FDI AND BALANCE OF PAYMENTS

FOREIGN DIRECT INVESTMENT FLOWS FDI and balance of payments

Foreign direct investment (FDI) is a key element in international economic integration. FDI creates direct, stable and long-lasting links between economies. It encourages the transfer of technology and know-how between countries, and allows the host economy to promote its products more widely in international markets. FDI is key to the creation of many global value chains by allowing firms to link and organise production across countries. FDI is also an additional source of funding for investment and, under the right policy environment, can be an important vehicle for development.

Definition Foreign direct investment is a category of investment that reflects the objective of establishing a lasting interest by a resident enterprise in one economy in an enterprise that is resident in an economy other than that of the direct investor. The direct or indirect ownership of 10% or more of the voting power is evidence of such a relationship.

Comparability In 2014, the implementation of the latest international standards for compiling FDI statistics came into widespread use, which generally enhanced the comparability of FDI statistics across countries. However, some differences remain. For example, data for Brazil, India, Korea, Norway, South Africa and Switzerland are on an asset/liability basis while data for the other countries are on a directional basis. Implementation of the new standards also caused major changes to FDI statistics. Therefore, long historical series are not available for all countries. Data for Austria, Chile, Denmark, Hungary, Iceland, Luxembourg, Mexico, the Netherlands, Poland, Portugal and Spain exclude resident Special Purpose Entities. The EU28 aggregate has an evolving composition: EU15 until end 2003; EU25 in 2004-06; and EU27 for 2007-12.

FDI flows are cross-border financial transactions within a given period (e.g. year) and between affiliated enterprises that are in a direct investment relationship. FDI flows include equity capital, reinvestment of earnings and intercompany debt.

Sources

Overview Despite large quarterly fluctuations, global FDI flows remained stable overall in 2014 as compared to 2013, at around USD 1 385 billion. FDI activity g ained momentum in the second half of 2014 after falling sharply in the first quarter due to a single large deal w h i ch re d u c e d b o t h i n wa rd F D I f l ow s i n t h e United States and outward FDI flows from the United Kingdom. Preliminary information for 2015 indicate that global FDI flows continued to rise in the first half of 2015. However, global FDI flows have stalled at levels substantially below the peak levels reached before the financial crisis (at USD 2 077 billion) and ensuing global recession that began in 2008. OECD investors accounted for around 65% of global FDI outflows in 2014 at USD 895 billion and were up 2% as compared to 2013. The top three investing countries we re t h e U n i t e d S t a t e s , Ja p a n a n d G e r m a ny, representing 40% of global FDI outflows. OECD countries received 42% of global FDI inflows at USD 588 billion, representing an 18% decrease as compared to 2013. 40% of global FDI inflows were hosted by four countries: China (the top recipient of FDI worldwide since 2010), the United States, Brazil and Canada.

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• OECD (2015), OECD International Direct Investment Statistics (Database).

Further information Analytical publications • OECD (2015), OECD Business and Finance Outlook, OECD Publishing. • OECD (2015), OECD Investment Policy Reviews, OECD Publishing. • OECD (2014), Annual Report on the OECD Guidelines for Multinational Enterprises, OECD Publishing.

Statistical publications • OECD (2010), Measuring Globalisation: OECD Economic Globalisation Indicators, OECD Publishing.

Methodological publications • Kalinova, B., A. Palerm and S. Thomsen (2010), “OECD’s FDI Restrictiveness Index: 2010 Update”, OECD Working Papers on International Investment, No. 2010/03. • OECD (2009), OECD Benchmark Definition of Foreign Direct Investment, Fourth edition, OECD Publishing.

Websites • Foreign Direct Investment Statistics – OECD Data, Analysis and Forecasts, www.oecd.org/investment/statistics. • OECD International Investment, www.oecd.org/daf/ investment. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • FDI AND BALANCE OF PAYMENTS FOREIGN DIRECT INVESTMENT FLOWS

Outflows and inflows of foreign direct investment Million US dollars Outflows of foreign direct investment

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Inflows of foreign direct investment

2009

2010

2011

2012

2013

2014

2009

2010

2011

2012

2013

2014

16 409 10 999 .. 39 660 6 487 950 3 689 1 375 .. 100 872 .. 2 055 1 852 2 248 .. 1 753 .. 74 699 17 436 .. 9 604 26 267 -1 002 12 330 1 807 814 .. 214 .. 26 205 44 361 1 553 28 993 310 383 366 450 893 448 -4 552 43 890 16 096 2 249 34 450 1 322

19 803 9 585 .. 34 721 10 226 1 168 1 382 159 .. 48 158 .. 1 558 1 173 -2 368 .. 8 657 .. 56 276 28 280 .. 15 050 68 363 716 30 520 6 149 -9 956 .. -19 .. 20 364 73 827 1 469 48 075 301 080 469 427 1 050 081 16 426 57 954 15 968 2 664 41 116 -84

1 716 21 933 46 413 52 144 12 470 -328 11 278 -1 476 .. 51 462 .. 1 774 4 713 18 .. 9 165 .. 107 550 29 705 .. 12 636 34 818 2 524 14 412 1 028 13 917 .. 200 .. 29 912 44 084 2 330 95 577 419 061 518 169 1 208 354 3 850 48 421 12 608 7 713 48 635 -229

6 737 13 114 33 834 53 948 17 252 1 794 7 359 1 032 .. 31 574 .. 678 11 717 -3 205 22 573 3 255 .. 122 514 30 632 .. 22 470 6 174 -457 27 536 2 905 -9 869 .. -258 .. 28 977 53 153 4 106 20 769 339 694 274 877 943 898 8 017 64 963 8 553 5 422 28 423 2 885

1 580 15 565 23 063 50 521 9 217 4 021 9 534 431 -2 686 24 993 34 313 -785 1 963 460 29 023 5 499 25 107 135 745 28 360 25 278 13 138 68 856 524 8 152 1 488 -139 -313 -214 11 771 29 074 10 237 3 525 -18 770 328 628 295 255 877 161 13 352 72 971 1 766 6 652 70 685 6 646

2 114 6 074 11 611 57 043 10 994 -529 12 984 -230 -926 42 871 104 230 904 3 472 -237 43 135 3 667 26 137 113 699 30 558 20 541 8 304 48 046 71 21 478 1 975 3 138 -123 264 31 613 13 994 16 819 6 656 -81 854 336 935 302 289 895 428 26 042 80 418 9 951 7 077 63 513 6 939

31 668 9 269 .. 22 733 12 051 2 929 392 1 840 .. 30 735 .. 2 436 1 998 79 .. 4 605 .. 11 939 9 022 .. 17 756 38 748 701 8 673 10 043 1 282 .. -477 .. 10 095 48 061 8 585 89 796 150 442 361 905 686 406 31 481 131 057 35 581 4 878 27 752 8 614

36 442 2 576 .. 28 399 15 220 6 147 -9 167 1 453 .. 13 890 .. 330 2 195 245 .. 6 335 .. -1 252 9 497 .. 26 168 -7 185 -61 21 238 12 800 1 507 .. 106 .. 141 17 509 9 086 58 180 205 850 372 419 736 942 53 345 243 703 27 397 13 771 31 668 4 014

58 906 10 625 76 938 39 667 16 815 2 323 11 488 978 .. 31 671 .. 1 144 6 315 1 107 .. 8 727 .. -1 757 9 773 .. 23 328 24 391 4 222 10 895 15 953 5 997 .. 1 088 .. 12 946 24 397 16 136 42 196 236 068 417 592 856 034 71 539 280 072 36 499 19 241 36 868 3 783

58 970 3 990 6 518 39 273 24 924 8 000 418 1 558 .. 16 985 .. 1 741 14 427 1 025 45 276 8 469 .. 1 732 9 496 .. 19 492 20 121 3 396 26 750 12 441 8 337 .. 339 .. 16 349 25 844 13 283 55 626 193 795 270 749 688 385 76 111 241 214 23 996 19 138 30 188 4 403

56 946 5 719 13 678 70 545 18 071 3 641 -742 546 -6 609 42 884 22 395 2 817 3 333 397 44 890 12 449 24 268 2 303 12 767 15 368 44 886 39 026 1 831 1 608 3 626 1 659 -604 -151 27 551 3 673 -22 553 12 355 47 589 216 587 304 812 722 749 80 843 290 928 28 153 18 817 53 397 8 296

47 742 6 428 3 655 57 376 20 820 5 908 3 859 507 15 726 15 192 -6 175 1 671 7 107 441 31 133 6 739 19 538 2 092 9 899 16 740 24 154 36 568 2 493 10 140 12 532 5 594 -332 1 061 20 314 10 697 21 942 12 198 52 478 111 577 269 570 587 814 96 895 289 097 33 870 23 039 30 011 5 714

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FDI flows As a percentage of GDP, 2014 or latest available year FDI Outflows

FDI Inflows 289

140

302 895 270 337 588

120 100 80 60 40 20 0 -20

-82

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GLOBALISATION • FDI AND BALANCE OF PAYMENTS

FOREIGN DIRECT INVESTMENT STOCKS Foreign direct investment (FDI) is a key element in international economic integration. FDI creates direct, stable and long-lasting links between economies. It encourages the transfer of technology and know-how between countries, and allows the host economy to promote its products more widely in international markets. FDI is key to the creation of many global value chains by allowing firms to link and organise production across countries.

also caused major changes to FDI statistics. Therefore, long historical series are not available for all countries. Data for Austria, Belgium, Chile, Denmark, Hungary, Iceland, Luxembourg, Mexico, the Netherlands, Norway, Poland, Portugal and Spain exclude resident Special Purpose Entities. The EU28 aggregate has an evolving composition: EU15 until end 2003; EU25 for 2004-06; and EU27 for 2007-12.

Definition Foreign direct investment is a category of investment that reflects the objective of establishing a lasting interest by a resident enterprise in one economy in an enterprise that is resident in an economy other than that of the direct investor. The direct or indirect ownership of 10% or more of the voting power is evidence of such a relationship. FDI positions relate to the stock of investments at a given point in time (e.g. end of year). FDI positions include equity (10% or more voting shares), reinvestment of earnings and inter-company debt.

Comparability In 2014, the implementation of the latest international standards for compiling FDI statistics came into widespread use, which generally enhanced the comparability of FDI statistics across countries. However, some differences remain. For example, data for Brazil, India, Korea, South Africa and Switzerland are on an asset/ liability basis while data for the other countries are on a directional basis. Implementation of the new standards

Sources • OECD (2015), OECD International Direct Investment Statistics (Database).

Further information Analytical publications

Overview At the end of 2014, OECD FDI stocks of outward and inward FDI stood at USD 19.8 trillion and USD 16.6 trillion respectively, a level that almost doubled as compared to the 2005 positions (at USD 10.2 trillion and USD 8.5 trillion respectively). For many countries, 2014 shows a decrease of their stock of inward and outward FDI from 2013, a development due in most cases to movements in the US dollar, which is used for the conversions. OECD investors account for around 80% of the global stock of outward FDI in 2014 as compared to 90% in 2005. The top three investing countries worldwide are the United States, Germany and the United Kingdom, accounting for 38% of global FDI outward stocks. OECD countries host 57% of the global stock of inward FDI in 2014 as compared to 73% in 2005. The top three hosts of FDI stocks worldwide in 2014 are the United States, China and the United Kingdom, which together represent 33% of the global stock of inward FDI.

78

• OECD (2015), OECD Business and Finance Outlook, OECD Publishing. • OECD (2015), OECD Investment Policy Reviews, OECD Publishing. • OECD (2014), Annual Report on the OECD Guidelines for Multinational Enterprises, OECD Publishing.

Statistical publications • OECD (2010), Measuring Globalisation: OECD Economic Globalisation Indicators, OECD Publishing.

Methodological publications • Kalinova, B., A. Palerm and S. Thomsen (2010), “OECD’s FDI Restrictiveness Index: 2010 Update”, OECD Working Papers on International Investment, No. 2010/03. • OECD (2009), OECD Benchmark Definition of Foreign Direct Investment, Fourth edition, OECD Publishing.

Websites • Foreign Direct Investment Statistics – OECD Data, Analysis and Forecasts, www.oecd.org/investment/statistics. • OECD International Investment, www.oecd.org/daf/ investment. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • FDI AND BALANCE OF PAYMENTS FOREIGN DIRECT INVESTMENT STOCKS

Outward and inward FDI stocks Million US dollars Outward direct investment stocks

Inward direct investment stocks

2005

2010

2011

2012

2013

2014

2005

2010

2011

2012

2013

2014

Australia 205 368 Austria 75 497 Belgium .. Canada 692 287 Chile .. Czech Republic 3 610 Denmark 88 076 Estonia 1 892 Finland .. France 625 585 Germany 831 364 Greece 13 602 Hungary 8 637 Iceland 10 091 Ireland .. Israel 23 114 Italy .. Japan 386 581 Korea 38 683 Luxembourg .. Mexico 60 882 Netherlands .. New Zealand 11 758 Norway .. Poland 1 776 Portugal 30 972 Slovak Republic .. Slovenia 3 276 Spain .. Sweden 207 836 Switzerland 492 889 Turkey 8 315 United Kingdom 1 177 335 United States 3 637 996 EU 28 4 579 580 OECD 10 256 966 Brazil 79 259 China 64 493 India 12 832 Indonesia .. Russian Federation .. South Africa 31 038

449 768 181 636 .. 986 049 48 084 14 923 165 369 5 189 .. 1 172 979 1 383 601 42 623 22 315 11 481 .. 68 973 .. 831 110 144 032 .. 110 014 .. 16 053 .. 16 407 43 968 3 456 8 147 .. 374 399 1 283 706 22 506 1 574 643 4 809 587 7 914 578 16 788 538 191 349 317 210 96 911 6 672 .. 83 248

418 814 193 133 .. 881 244 59 376 13 214 176 071 4 267 .. 1 247 922 1 432 696 48 041 26 357 11 711 .. 70 783 .. 955 854 172 413 .. 114 265 .. 19 007 .. 18 928 54 412 4 021 7 826 .. 379 286 1 364 894 27 652 1 625 966 4 514 327 8 156 983 16 879 735 206 187 424 780 109 519 6 204 315 742 97 051

476 426 209 533 419 640 958 321 73 005 17 368 183 985 5 469 .. 1 307 605 1 346 449 44 960 37 717 9 093 412 011 71 172 .. 1 037 700 202 875 .. 148 204 .. 19 529 .. 26 102 49 587 4 765 7 533 .. 389 229 1 473 863 30 936 1 593 820 5 222 873 8 706 214 18 542 367 270 864 531 900 118 072 12 401 332 836 111 779

456 993 231 840 465 528 1 113 589 82 499 20 627 190 661 6 787 147 422 1 360 308 1 449 647 36 300 38 533 9 503 538 755 75 374 533 906 1 118 009 238 812 101 283 136 523 1 124 797 18 740 198 677 27 725 51 200 4 830 7 142 513 326 419 443 1 465 278 33 321 1 579 928 6 291 370 8 985 817 20 088 674 300 791 660 480 119 838 19 350 385 328 128 681

448 171 216 555 439 972 1 134 132 79 536 15 978 173 748 6 093 116 721 1 274 769 1 411 083 30 390 39 063 8 031 632 617 78 016 483 703 1 169 077 258 553 129 759 134 058 1 028 876 18 998 230 721 24 938 43 541 2 977 6 432 491 005 377 351 1 462 971 39 507 1 513 222 6 285 320 8 579 340 19 805 885 302 964 744 289 129 788 24 116 307 200 ..

247 748 83 767 .. 638 650 .. 60 662 74 650 11 192 .. 371 448 646 319 29 189 61 110 4 553 .. 30 811 .. 100 899 104 879 .. 234 149 .. 44 094 .. 86 338 51 828 .. 7 056 .. 171 902 252 731 71 322 779 085 2 817 970 3 875 487 8 551 507 181 344 471 549 50 614 .. .. 96 693

527 096 160 614 .. 994 749 151 058 128 505 96 985 14 451 .. 630 692 955 428 35 025 90 851 11 025 .. 60 220 .. 214 890 135 500 .. 363 769 .. 57 365 .. 187 602 84 869 50 327 10 667 .. 347 163 888 695 187 013 1 057 145 3 422 293 6 294 556 13 156 368 682 346 1 569 604 205 603 160 735 .. 179 564

554 931 152 760 .. 872 772 157 090 120 569 98 406 14 906 .. 698 832 965 948 29 058 85 331 11 754 .. 64 496 .. 225 785 135 178 .. 338 975 .. 64 444 .. 164 424 84 979 51 978 11 490 .. 349 058 976 866 136 475 1 145 700 3 498 726 6 513 898 13 385 731 696 408 1 906 908 206 374 184 804 408 942 159 391

614 542 164 696 486 226 962 090 180 974 136 494 98 293 17 077 .. 717 253 862 875 24 763 104 009 9 325 364 569 74 703 .. 205 754 157 876 .. 366 564 .. 71 472 .. 198 953 98 698 55 118 12 202 .. 373 444 1 050 518 189 994 1 428 091 3 915 538 7 451 316 15 047 058 743 964 2 068 000 224 984 211 635 438 195 163 509

568 094 178 828 482 946 951 698 195 350 134 085 94 486 21 202 87 096 796 500 944 631 25 850 108 410 7 367 392 921 87 972 364 965 170 713 180 860 91 397 391 879 739 835 75 209 196 448 229 167 108 181 58 022 12 269 604 681 389 169 1 033 833 149 608 1 490 033 4 954 713 7 833 471 16 318 416 747 891 2 331 238 226 748 230 799 471 481 152 123

568 863 175 592 456 670 937 970 197 015 111 504 95 219 19 645 93 428 726 685 827 857 22 456 98 899 7 422 376 925 98 698 338 747 169 436 182 037 179 824 339 155 679 540 76 651 226 632 205 581 92 722 52 310 12 257 539 625 317 945 1 106 015 177 388 1 744 230 5 390 081 7 599 959 16 645 025 755 371 2 677 901 252 141 253 655 272 243 ..

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FDI stocks As a percentage of GDP, 2014 or latest available year Outward FDI 180

Inward FDI 200 277 209 252

160 140 120 100 80 60 40 20 0

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GLOBALISATION • FDI AND BALANCE OF PAYMENTS

FDI REGULATORY RESTRICTIVENESS INDEX Foreign direct investment (FDI) is a key element in international economic integration. FDI creates direct, stable and long-lasting links between economies. It encourages the transfer of technology and know-how between countries, and allows the host economy to promote its products more widely in international markets. FDI is also an additional source of funding for investment and, under the right policy environment, it can be an important vehicle for development.

are limited to statutory regulatory restrictions on FDI as reflected in countries’ lists of exceptions to national treatment and measures notified for transparency under OECD instruments without assessing their actual enforcement. For the non-OECD countries, information is collected through Investment Policy Reviews. Information is updated on a yearly basis following the OECD Freedom of Investment monitoring of investment measures, and adhoc legal and regulatory documental research for the countries not covered.

Definition The OECD FDI Regulatory Restrictiveness Index gauges the restrictiveness of a country’s FDI rules through four types of restrictions: foreign equity restrictions; screening or approval mechanisms; restrictions on key foreign employment; and operational restrictions.

Comparability The OECD FDI Regulatory Restrictiveness Index covers statutory restrictions in 22 sectors. The Index is currently available for 8 years: 1997, 2003, 2006, 2010-14. Restrictions are scored on a range from 0 (open) to 1 (closed). Absence of scores refers to the absence of restrictions. Implementation issues are not addressed and factors such as the degree of transparency or discretion in granting approvals are not taken into account. For OECD and non-OECD countries adherents to the OECD Declaration on International Investment and Multinational Enterprises, the measures taken into account by the index

Sources • OECD (2015), “OECD FDI regulatory restrictiveness index”, OECD International Direct Investment Statistics (Database).

Further information

Overview The OECD FDI Regulatory Restrictiveness Index shows that there still remains significant variation across countries in terms of statutory restrictions on foreign direct investment. Countries in Asia and those with significant raw materials tend to be more restrictive. When used in combination with indicators measuring other aspects of the FDI climate, the Index can help to account for variations in countries’ success in attracting FDI. Seen from a broad perspective, countries continue to liberalise their requirements on international investment over time, albeit with occasional relapses. But worldwide, many service sectors remain partly off limits to foreign investors, holding back potential economy-wide productivity gains. Even within OECD countries, restrictions on foreign investment remain in key network sectors such as energy and transport. A key risk is that FDI restrictions limiting competition in service sectors end-up raising service input costs for other economic sectors and constraining productivity growth in the more dynamic downstream ones.

80

Analytical publications • Nicolas, F., S. Thomsen and M. Bang (2013), “Lessons from Investment Policy Reform in Korea”, OECD Working Papers on International Investment, No. 2013/02, OECD Publishing. • OECD (2015), OECD Investment Policy Reviews, OECD Publishing. • OECD (2014), Southeast Asia Investment Policy Perspectives, Paris.

Methodological publications • Kalinova, B., A. Palerm and S. Thomsen (2010), “OECD’s FDI Restrictiveness Index: 2010 Update”, OECD Working Papers on International Investment, 2010/03, OECD Publishing.

Websites • Monitoring investment and trade measures, www.oecd.org/investment/g20.htm. • National Treatment for Foreign-Controlled Enterprises, www.oecd.org/daf/inv/investment-policy/ nationaltreatmentinstrument.htm. • OECD Codes of Liberalisation of Capital Movements and of Current Invisible Operations,www.oecd.org/daf/fin/ insurance/codes.htm.

OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • FDI AND BALANCE OF PAYMENTS FDI REGULATORY RESTRICTIVENESS INDEX

FDI Regulatory Restrictiveness Index 2014 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Total FDI Index

Primary sector

Manufacturing

Electricity

Distribution

Transport

Media

Communications

Financial services

Business services

0.127 0.106 0.040 0.173 0.057 0.010 0.033 0.018 0.019 0.045 0.023 0.032 0.029 0.167 0.043 0.118 0.052 0.052 0.135 0.004 0.193 0.015 0.240 0.085 0.072 0.007 0.049 0.007 0.021 0.059 0.083 0.059 0.061 0.089 .. 0.068 0.101 0.418 0.263 0.340 0.181 0.055

0.078 0.150 0.035 0.198 0.150 0.025 0.056 0.023 0.015 0.155 0.069 0.079 0.241 0.135 0.060 0.130 0.069 0.250 0.319 0.062 0.325 0.156 0.050 0.006 0.011 0.138 0.013 0.160 0.181 .. 0.098 0.188 0.456 0.405 0.426 0.157 0.010

0.075 0.023 0.110 0.009 0.112 0.020 0.002 0.103 0.200 0.023 .. 0.020 0.025 0.236 0.046 0.067 0.095 0.010

0.075 1.000 0.023 0.110 0.084 0.562 0.770 0.025 0.417 0.100 0.200 0.500 0.023 0.197 .. 0.120 0.025 0.530 0.064 0.100 0.030 0.010

0.075 0.023 0.110 0.009 0.112 0.020 0.001 0.175 0.200 0.023 .. 0.022 0.025 0.256 0.238 0.560 0.050 0.010

0.260 0.182 0.114 0.277 0.413 0.075 0.083 0.150 0.092 0.150 0.200 0.150 0.167 0.204 0.125 0.403 0.200 0.275 0.508 0.075 0.528 0.083 0.283 0.350 0.092 0.083 0.075 0.150 0.075 0.292 0.250 0.383 0.114 0.550 .. 0.218 0.275 0.642 0.179 0.412 0.350 0.193

0.200 0.023 0.710 0.188 0.009 0.048 0.025 0.113 0.112 0.264 0.363 0.200 0.563 0.525 0.200 0.125 0.298 0.225 0.200 0.467 0.200 0.248 0.250 .. 0.163 0.550 1.000 0.395 0.885 0.350 0.298

0.400 0.023 0.575 0.009 0.112 0.395 0.265 0.325 0.100 0.400 0.075 0.200 0.023 0.110 .. 0.089 0.025 0.750 0.175 0.290 0.100 0.010

0.133 0.002 0.024 0.077 0.017 0.010 0.002 0.002 0.011 0.054 0.005 0.020 0.005 0.119 0.009 0.037 0.018 0.050 0.002 0.133 0.002 0.233 0.067 0.003 0.017 0.002 0.002 0.002 0.002 0.067 0.024 0.042 .. 0.035 0.108 0.513 0.320 0.239 0.432 0.052

0.078 0.322 0.248 0.110 0.013 0.363 0.046 0.003 0.056 0.112 0.020 0.100 0.200 0.313 0.113 0.051 0.125 0.023 .. 0.067 0.025 0.388 0.563 0.579 0.175 0.260

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FDI regulatory restrictiveness index 2014 0.45

Closed = 1; Open = 0

0.40 0.35 0.30 0.25 0.20 0.15 0.10

OECD average

0.05 0.00

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GLOBALISATION • FDI AND BALANCE OF PAYMENTS

BALANCE OF PAYMENTS The current account balance is the difference between current receipts from abroad and current payments to abroad. When the current account balance is positive, the country can use the surplus to repay foreign debts, to acquire foreign assets or to lend to the rest of the world. When the current account balance is negative, the deficit will be financed by borrowing from abroad or by liquidating foreign assets acquired in earlier periods.

Definition Current account transactions consist of exports and imports of goods; exports and imports of services such as travel, international freight and passenger transport, insurance and financial services; primary income flows, consisting of compensation of employees (e.g. wages and salaries) and investment income (i.e. property income in System of National Accounts); and secondary income such as government transfers (i.e. international cooperation), worker’s remittances and other transfers such as gifts, inheritances and prizes won from lotteries.

retained in the country where the direct investment enterprises are located shown as direct investment income reinvested earnings in the current account and as inward direct investment in the financial account.

Comparability The data are taken from balance of payments statistics compiled according to the International Monetary Fund (IMF) Balance of Payments Manual and International Investment Position (BPM6) which was introduced in most countries in 2014. However, data for Mexico, Brazil, China, India, Indonesia, and South Africa are still presented according to the old BPM5. The IMF, OECD and other international organisations closely monitor balance of payments statistics reported by member countries through regular meetings of balance of payments compilers. As a result, there is relatively good comparability across countries.

Investment income includes retained earnings (i.e. profits not distributed as dividends to the direct investor) of foreign subsidiaries. In general, earnings of direct investment enterprises are treated as if they were remitted abroad to the direct investor, with the part that is actually

Overview The lead up to and the aftermath of the global financial and economic crisis had a clear impact on current account balances as a percentage of GDP of for a large number of countries between 2002, 2006, 2010 and 2014. An example of this rise and fall is Iceland, which saw its current account balance as a percentage of GDP fall from 1.1% in 2002 to negative 23.2% in 2006, due to the large inflow of capital seeking high interest rates and now sits at 3.2% in 2014. A number of other countries that exhibit a similar pattern are Estonia, Ireland, Portugal, Spain and the United States. OECD countries that have recorded current account deficits throughout the period since 2002 are: Australia, M e x i c o, N ew Z e a l a n d , Po l a n d , Tu r k ey, t h e United Kingdom and the United States. This is partly due to the way in which earnings of direct investment enterprises are treated. Turkey is the only OECD country that recorded a current account deficit of 5% of GDP or more on average over the three years to 2014 (negative 6.6%), although Turkey’s current account deficit as a percentage of GDP has improved since 2011 when it reached negative 9.6%. Surpluses in excess of 5% of GDP were recorded by D e n m a r k , G e r m a ny, Ko re a , L u x e m b o u rg , t h e N e t h e r l a n d s , N o r way, S we d e n , S l ove n i a a n d Switzerland.

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Sources • OECD (2015), Main Economic Indicators, OECD Publishing.

Further information Analytical publications • OECD (2008), Export Credit Financing Systems in OECD Member Countries and Non-Member Economies, OECD Publishing.

Methodological publications • International Monetary Fund (IMF) (2009), Balance of Payments and International Investment Position Manual, 6th edition, IMF, Washington DC. • OECD et al. (2010), Manual on Statistics of International Trade in Services, United Nations.

Online databases • Main Economic Indicators. • OECD Economic Outlook: Statistics and Projections.

Websites • Sources & Methods of the OECD Economic Outlook, www.oecd.org/economy/outlook/sources-and-methods.htm. OECD FACTBOOK 2015-2016 © OECD 2016

GLOBALISATION • FDI AND BALANCE OF PAYMENTS BALANCE OF PAYMENTS

Current account balance As a percentage of GDP Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

-3.7 .. .. 1.7 .. -5.1 .. -11.1 8.2 1.2 1.9 .. -6.3 1.1 -0.6 -0.9 -0.5 2.7 0.8 9.4 -2.0 .. -2.2 .. .. -8.5 .. 0.9 -3.7 4.5 8.6 -0.3 -2.1 -4.2 .. .. -1.3 2.4 1.4 3.7 .. 0.8

-5.4 .. 3.5 1.1 -0.9 -5.7 .. -12.9 4.6 0.9 1.4 .. -8.0 -5.0 0.5 0.6 -0.8 3.2 1.7 6.6 -1.2 .. -2.4 .. .. -7.2 .. -0.8 -3.9 6.6 12.7 -2.5 -1.7 -4.5 .. .. 0.7 2.6 1.5 3.2 7.8 -1.0

-6.2 .. 3.3 2.3 2.4 -4.2 .. -12.1 5.8 0.4 4.5 .. -8.6 -9.8 -1.6 1.5 -0.5 3.9 3.9 12.0 -0.9 6.8 -4.5 .. -5.4 -8.3 .. -2.7 -5.6 6.3 14.5 -3.6 -1.8 -5.2 .. .. 1.7 3.6 0.2 0.6 9.7 -2.9

-5.9 .. 2.1 1.8 1.6 -1.0 4.3 -8.7 3.0 0.0 4.6 .. -7.0 -15.7 -5.2 3.0 -0.9 3.7 1.4 11.1 -1.1 6.1 -7.0 16.2 -2.5 -9.9 .. -1.8 -7.5 6.5 13.4 -4.4 -1.2 -5.7 .. .. 1.6 5.9 -1.2 0.1 11.1 -3.3

-5.8 3.3 1.9 1.4 4.7 -2.1 3.2 -14.9 3.8 0.0 5.7 .. -7.1 -23.2 -5.8 4.6 -1.5 4.0 0.3 10.0 -0.8 7.9 -7.2 16.2 -3.9 -10.7 .. -1.8 -9.0 8.3 14.2 -6.0 -2.3 -5.8 .. .. 1.2 8.5 -1.0 2.7 9.7 -5.1

-6.7 3.8 2.0 0.8 4.3 -4.3 1.4 -15.1 3.8 -0.3 6.7 .. -7.1 -14.2 -9.2 4.1 -1.4 4.9 1.0 9.8 -1.4 6.0 -6.8 12.2 -6.2 -9.7 .. -4.1 -9.6 8.9 10.0 -5.8 -2.5 -5.0 .. .. 0.2 10.1 -0.6 2.2 5.6 -6.6

-4.9 4.5 -1.0 0.1 -3.1 -1.9 2.7 -8.6 2.2 -1.0 5.6 -14.4 -7.0 -22.9 -9.3 1.1 -2.8 2.9 0.6 7.3 -1.9 4.1 -7.7 15.6 -6.5 -12.1 -6.2 -5.3 -9.2 8.6 2.2 -5.3 -3.6 -4.7 .. -1.7 -1.6 9.3 -2.5 0.0 6.2 -6.8

-4.6 2.6 -1.1 -2.9 1.5 -2.3 3.3 2.6 1.9 -0.8 5.7 -10.9 -0.8 -9.8 -6.6 3.5 -1.9 2.9 3.9 7.7 -0.9 5.8 -2.3 10.6 -3.8 -10.4 -3.5 -0.6 -4.3 5.9 7.1 -1.9 -3.0 -2.7 .. -0.5 -1.3 4.9 -2.0 1.8 3.8 -3.9

-3.6 2.9 1.8 -3.5 1.7 -3.6 5.7 1.8 1.2 -0.8 5.6 -10.0 0.3 -6.5 -3.2 3.6 -3.5 4.0 2.6 7.0 -0.5 7.3 -2.2 10.9 -5.5 -10.2 -4.7 -0.1 -3.9 6.0 14.0 -6.1 -2.8 -3.0 .. -0.4 -2.1 4.0 -3.2 0.7 4.6 -2.8

-3.0 1.6 -1.1 -2.7 -1.1 -2.1 5.7 1.3 -1.8 -1.0 6.1 -9.9 0.8 -5.4 -2.7 2.3 -3.1 2.2 1.5 5.8 -1.1 9.1 -2.8 12.3 -5.0 -6.0 -5.0 0.2 -3.2 6.9 6.8 -9.6 -1.7 -3.0 .. -0.6 -2.0 1.9 .. 0.2 5.0 ..

-4.3 1.5 -0.1 -3.3 -3.6 -1.6 5.7 -2.4 -1.9 -1.5 6.8 -2.4 1.8 -4.4 1.5 1.5 -0.5 1.0 4.1 5.8 -1.4 10.8 -4.0 12.4 -3.4 -2.1 0.9 2.6 -0.3 6.6 9.9 -6.2 -3.3 -2.8 .. -0.4 -2.3 2.3 .. -2.7 3.5 ..

-3.4 2.0 -0.2 -3.0 -3.7 -0.5 7.2 -0.1 -1.7 -1.4 6.4 -2.1 4.0 5.7 4.3 3.0 0.9 0.8 6.2 4.7 -2.3 11.0 -3.1 10.0 -1.3 1.4 1.8 5.6 1.4 7.3 10.7 -7.8 -4.5 -2.3 .. -0.1 -3.4 .. .. -3.1 1.7 ..

-3.0 2.0 0.1 -2.1 -1.2 0.6 7.8 1.0 -1.8 -0.8 7.4 -2.1 3.9 3.2 6.1 4.3 1.9 0.5 6.3 5.1 -1.9 10.8 -3.1 9.4 -1.3 0.6 0.1 7.0 0.8 6.8 7.1 -5.8 -5.1 -2.2 .. 0.0 -3.9 .. .. .. 3.1 ..

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Current account balance As a percentage of GDP 3-year average at end of period (2012-14)

3 -year average at beginning of period (2002-04)

15

10

5

0

-5

-10

-15

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PRICES PRICES AND INTEREST RATES INFLATION (CPI) PRODUCER PRICE INDICES LONG-TERM INTEREST RATES

PURCHASING POWER PARITIES AND EXCHANGE RATES RATES OF CONVERSION REAL EFFECTIVE EXCHANGE RATES

PRICES • PRICES AND INTEREST RATES

INFLATION (CPI) Prices and interest rates

Consumer price indices have a long history in official statistics. They provide a measure of the erosion of living standards through price inflation and are probably one of the best known economic statistics used by the media and general public.

Definition Consumer price indices (CPI) measure the change in the prices of a basket of goods and services that are typically purchased by specific groups of households. Consumer price indices cover virtually all households except for “institutional” households – people in prisons and military barracks, for example – and, in some countries, households in the highest income group.

changes in the quality of goods and services, the frequency with which the basket weights are updated, and the index formulae used. In particular, country methodologies for the treatment of owner-occupied housing vary significantly. The European Harmonised Indices of Consumer Prices (HICPs) exclude owner-occupied housing as do national CPIs for Belgium, Chile, Estonia, France, Greece, Italy, Luxembourg, Poland, Portugal, Slovenia, Spain, Turkey, the United Kingdom and most of the countries outside the OECD area. For the United Kingdom, the national CPI is the same as the HICP. The European Union and euro area CPI refer to the HICP published by Eurostat and cover the 28 and 19 countries respectively for the entire period of the time series.

The CPI for all items excluding food and energy provides a measure of underlying inflation, which is less affected by short-term fluctuations. The index for food covers food and non-alcoholic beverages but excludes purchases in restaurants. The index for energy covers all forms of energy, including fuels for motor vehicles, heating and other household uses.

Comparability There are a number of differences in the ways that these indices are calculated. The most important ones concern the treatment of dwelling costs, the adjustments made for

Overview The annual average inflation rate from 2012-14 has been below 2.5% in all OECD countries except Chile, Iceland, Mexico and Turkey. The CPI for the OECD total dropped from 2.5% in the 3-year average from 2002-04 to 1.9% in the 3-year average from 2012-14. Over the entire period from 2002 to 2014, most OECD countries experienced substantial declines in inflation. By contrast, Japan experienced a substantial increase of inflation after many years of negative and flat rates while Mexico, Turkey, and Iceland all experienced periods or years of high inflation during this period. Annual inflation rates have been higher for countries outside the OECD area.

Sources

Energy prices have been volatile during the whole period (2000-14) and have recorded large swings, with spikes in 2000, 2005, 2008 and 2011 and sharp declines in 2002, 2007 and 2014. Food prices have risen by less than total consumer prices in 2000 and 2010 but for the most recent period, 2014, they have risen faster. When excluding these more volatile items, the underlying consumer price index (i.e. all items excluding food and energy) points to a progressive decline in inflation rates from 2000 to 2010 followed by a slight increase from 2010 onwards.

Further information

• OECD (2015), Main Economic Indicators, OECD Publishing.

Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • Brook, A.M. et al. (2004), “Oil Price Developments: Drivers, Economic Consequences and Policy Responses”, OECD Economics Department Working Papers, No. 412.

Methodological publications • OECD et al. (2004), Consumer Price Index Manual: Theory and Practice, ILO, Geneva.

Websites • OECD Main Economic Indicators, www.oecd.org/std/mei.

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PRICES • PRICES AND INTEREST RATES INFLATION (CPI)

Inflation (CPI) Annual growth in percentage All items

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

All items non-food, non-energy

Food

Energy

2000

2010

2014

2000

2010

2014

2000

2010

2014

2000

2010

2014

4.5 2.3 2.5 2.7 3.8 3.8 2.9 4.0 3.0 1.7 1.4 3.2 9.8 5.1 5.6 1.1 2.5 -0.7 2.3 3.2 9.5 2.3 2.6 3.1 9.9 2.9 12.0 8.9 3.4 0.9 1.6 54.9 0.8 3.4 2.2 3.5 4.0 7.0 0.4 4.0 3.7 20.8 5.3

2.9 1.8 2.2 1.8 1.4 1.5 2.3 3.0 1.2 1.5 1.1 4.7 4.9 5.4 -0.9 2.7 1.5 -0.7 2.9 2.3 4.2 1.3 2.3 2.4 2.6 1.4 1.0 1.8 1.8 1.2 0.7 8.6 3.3 1.6 1.6 2.1 1.9 5.0 3.3 12.0 5.1 6.9 4.1

2.5 1.6 0.3 1.9 4.7 0.4 0.6 -0.1 1.0 0.5 0.9 -1.3 -0.2 2.0 0.2 0.5 0.2 2.7 1.3 0.6 4.0 1.0 1.2 2.0 0.1 -0.3 -0.1 0.2 -0.2 -0.2 0.0 8.9 1.5 1.6 0.4 0.6 1.7 6.3 2.0 6.4 6.4 7.8 6.1

4.4 1.7 1.8 1.7 3.1 3.3 2.1 3.9 2.6 0.5 0.9 2.2 8.4 4.7 5.6 0.4 2.1 -0.5 1.8 2.2 10.4 1.9 2.4 2.5 9.3 2.9 11.5 7.3 2.9 -0.3 1.2 58.0 0.1 2.4 1.0 1.2 3.4 .. .. .. .. .. ..

2.8 1.4 1.5 1.3 0.5 1.1 1.9 0.8 1.2 0.9 0.7 3.4 3.7 4.7 -1.2 2.6 1.6 -1.2 1.8 1.6 4.2 1.7 1.9 0.9 1.5 1.0 3.1 0.2 0.6 -0.4 0.2 7.2 2.9 1.0 1.0 1.3 1.3 .. .. .. .. .. 4.2

2.6 2.0 1.6 1.6 3.9 0.4 0.9 1.0 1.5 0.9 1.4 -1.2 2.3 2.7 0.8 0.9 0.9 1.9 1.7 1.3 3.2 1.5 1.4 3.1 0.7 0.1 0.7 0.7 0.0 0.6 0.0 8.6 1.6 1.7 0.8 0.9 1.8 .. .. .. .. .. 5.5

0.3 0.6 0.9 1.1 1.1 1.0 2.5 2.4 1.1 2.2 -0.7 1.9 9.2 4.1 3.1 2.3 1.6 -2.3 0.9 2.0 5.4 0.2 1.1 1.9 9.7 2.1 5.2 -13.8 2.1 0.0 1.6 46.6 -0.5 2.2 1.2 3.9 2.3 5.1 -2.6 .. -4.8 17.8 7.8

1.1 0.5 1.7 0.9 2.2 1.5 0.4 3.0 -3.4 0.8 1.2 0.1 2.8 4.2 -4.6 2.5 0.2 -0.3 6.4 0.9 3.4 -0.1 1.0 0.2 2.8 -0.2 1.6 1.0 -0.8 1.4 -1.1 10.6 3.4 0.3 0.4 1.0 1.1 6.1 7.2 .. 9.4 7.0 1.2

2.8 2.0 -0.4 2.5 7.0 2.0 -0.9 0.0 0.2 -0.8 1.0 -1.7 -0.8 0.5 -2.2 -1.4 0.1 4.2 0.3 0.6 4.8 -0.1 0.3 3.1 -1.0 -1.3 -0.8 -0.3 -0.3 0.4 0.9 12.6 -0.2 2.4 -0.1 -0.2 2.1 7.6 3.1 .. 6.8 10.3 8.0

16.3 10.7 14.4 16.2 22.0 15.1 11.8 8.0 12.6 12.2 13.9 17.2 17.3 11.9 13.6 9.5 11.6 2.7 9.6 19.8 16.8 14.9 11.0 11.3 13.4 6.0 41.8 25.2 13.3 7.2 18.0 56.4 7.0 16.9 13.4 12.7 14.7 .. .. .. .. .. ..

8.5 7.6 9.5 6.6 7.1 3.8 9.0 12.3 10.6 9.6 4.0 28.8 10.8 15.5 9.6 3.9 3.5 2.7 6.5 10.2 5.4 -0.3 7.0 15.5 6.2 9.5 -2.8 13.2 12.5 6.8 9.2 10.5 6.1 9.5 7.4 7.2 7.8 .. .. .. .. .. 14.6

1.2 -2.0 -6.2 3.5 6.2 -4.2 -0.2 -4.0 -1.7 -1.1 -2.1 -1.8 -6.8 -1.3 -1.5 -0.3 -3.0 6.5 -0.4 -4.6 8.4 -1.7 1.2 -4.0 -1.1 -1.4 -1.8 -1.4 -0.8 -2.6 -1.0 2.5 0.1 -0.3 -1.9 -1.6 0.5 .. .. .. .. .. 7.2

1 2 http://dx.doi.org/10.1787/888933336052

CPI: all items Average annual growth in percentage 3-year average at end of period (2012-2014)

3-year average at end of period (2012-2014) 13

24

10

8

6

4

2

0

-2

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87

PRICES • PRICES AND INTEREST RATES

PRODUCER PRICE INDICES A variety of price indices may be used to measure inflation in an economy. These include consumer price indices (CPI), price indices relating to specific goods and/or services, GDP deflators and producer price indices (PPI). Whereas CPIs are designed to measure changes over time in average retail prices of a fixed basket of goods and services taken as representing the consumption habits of households, PPIs aim to provide measures of average movements of prices applied by the producers of various commodities. They are often seen as advanced indicators of price changes throughout the economy, including changes in the prices of consumer goods and services.

Definition

affect cross-country comparability. This is especially the case for aspects such as the weighting and aggregation systems, the treatment of quality differences, the sampling and collection of individual prices, the frequency with which the weights are updated, and in the index formulae used. Differences may also arise concerning the scope of the manufacturing sector and the statistical unit used for measurement. In some countries, for example, indices may reflect price changes in the output of the manufacturing sector as opposed to manufactured products. While the PPI series for most countries refer to domestic sales of manufacturing goods, those for Australia, Canada, Chile, New Zealand and the United States include prices applied for foreign sales (i.e. “total market”).

Producer price indices measure the rate of change in prices of products sold as they leave the producer. They exclude any taxes, transport and trade margins that the purchaser may have to pay. Manufacturing covers the production of semi-processed goods and other intermediate goods as well as final products such as consumer goods and capital equipment. The indexes shown here are weighted averages of monthly price changes in the manufacturing sector.

Comparability The precise ways in which PPIs are defined and constructed depend on their intended use. In this context, national practices may differ and these differences may

Overview In the 3-year average from 2012-14, producer prices in the OECD area as a whole increased at an annual rate of around 0.9%, a lower rate than recorded in the 3-year average from 2002-04 (2.1%). Producer prices have been, however, volatile during the whole period (2002-14), and have recorded swings, with peaks in 2008 and 2011 and decreases in 2002, 2009 and 2013. The effect of the financial and economic crisis is particularly noteworthy, with nearly all OECD countries recording negative growth in producer prices in 2009, with the OECD average at minus 4.0% for that year. Since then the picture has been less clear in producer prices with some OECD countries seeing large increases in 2011 followed by large drops in 2012 and 2013 (Greece, Hungary and the Netherlands), while some have recorded low or continued negative growth (Switzerland and Sweden). The year 2014 shows also diverging patterns among OECD countries, with, on one side, large increases recorded in Turkey and Chile and to a smaller extent in Sweden, Australia, Canada, Japan and Mexico, and a slowdown in producer price inflation rates recorded in New Zealand, the United Kingdom, Belgium and Estonia.

Sources • OECD (2015), Main Economic Indicators, OECD Publishing.

Further information Analytical publications • Brook, A.M. et al. (2004), “Oil Price Developments: Drivers, Economic Consequences and Policy Responses”, OECD Economics Department Working Papers, No. 412. • OECD (2015), OECD Economic Outlook, OECD Publishing.

Methodological publications • International Monetary Fund (IMF) et al. (2004), Producer Price Index Manual: Theory and Practice, IMF, Washington, DC. • OECD (2011), Producer price Indices - Comparative Methodological Analysis, OECD, Paris. • OECD (2007), Eurostat-OECD Methodological Guide for Developing Producer Price Indices for Services, OECD Publishing.

Online databases • Main Economic Indicators: Producer prices.

Websites • OECD Main Economic Indicators, www.oecd.org/std/mei.

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PRICES • PRICES AND INTEREST RATES PRODUCER PRICE INDICES

PPI: domestic manufacturing Annual growth in percentage Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

0.2 -1.4 0.1 0.1 .. -1.3 1.0 -1.0 -1.9 -0.1 0.2 2.1 2.0 .. 2.1 3.9 0.8 -2.4 -1.6 0.9 3.2 -0.6 0.0 -0.4 -1.7 0.4 2.5 4.9 0.6 0.6 .. 48.3 -0.3 -0.7 0.3 0.2 0.8 .. .. .. .. 8.0 13.3

0.5 0.3 0.9 -1.2 .. -0.4 0.0 -0.6 -1.5 0.7 0.6 2.1 3.7 .. 0.8 4.3 1.4 -1.4 1.7 3.3 6.6 1.3 -1.7 1.4 0.8 0.4 -0.1 2.9 1.4 -0.9 .. 20.8 1.1 2.5 0.9 1.0 1.8 .. .. .. .. 16.0 4.6

3.9 2.2 4.2 3.2 .. 5.8 1.0 3.4 -0.2 2.0 1.7 3.8 7.3 .. 0.4 5.4 3.3 0.3 7.6 14.8 8.6 3.6 2.8 3.1 8.0 2.9 2.5 4.2 3.7 1.8 2.0 13.1 2.2 4.3 2.5 2.9 3.7 .. .. .. .. 19.4 2.0

6.0 3.7 6.0 1.6 2.9 2.0 3.0 2.3 3.8 2.7 2.4 6.4 4.3 .. 1.9 6.2 3.1 0.8 3.1 0.1 4.5 4.5 5.6 3.5 1.4 3.4 1.3 3.3 4.7 4.0 2.0 7.6 4.0 5.5 3.1 3.3 4.0 .. .. .. .. 13.8 3.7

7.9 1.8 5.5 2.3 5.0 0.6 3.4 4.8 5.0 3.3 2.3 7.9 5.7 17.5 3.5 5.7 4.0 1.9 0.1 9.0 6.0 4.8 6.5 3.0 1.9 3.4 1.5 2.4 5.0 3.9 2.7 9.3 3.1 4.0 3.4 3.4 3.7 .. .. .. .. 11.1 6.4

2.3 3.4 3.6 1.5 6.0 3.5 4.9 10.1 4.7 2.7 2.3 3.5 4.3 1.8 2.2 3.5 3.4 1.3 0.8 7.6 5.0 6.1 4.0 4.4 3.6 1.5 0.2 4.4 3.4 3.3 2.8 5.6 3.0 3.8 3.0 3.1 3.2 .. .. .. .. 13.2 9.8

8.3 3.4 5.7 4.4 15.9 3.1 5.7 7.6 7.2 5.0 3.1 9.7 8.6 31.0 5.9 9.6 5.0 4.1 12.1 12.9 8.6 7.5 14.9 7.8 3.4 5.0 2.0 5.2 6.0 3.9 4.4 11.8 9.5 7.9 4.6 5.1 6.8 .. .. .. .. 21.1 15.2

-5.4 -2.2 -4.9 -3.5 -3.3 -5.5 -1.2 -3.9 -6.7 -6.2 -3.4 -7.2 -0.1 11.3 -3.6 -6.3 -5.6 -4.8 -1.8 -19.2 5.4 -9.6 -4.8 0.3 -2.6 -5.5 -5.9 -2.0 -5.5 1.0 -2.8 -0.6 -2.3 -4.9 -5.0 -4.6 -4.0 .. .. .. .. -5.1 0.7

1.9 4.4 6.3 1.5 5.5 1.5 3.2 2.1 5.2 2.3 2.5 6.9 5.7 11.8 1.6 4.0 3.6 -0.3 4.3 8.3 4.7 6.6 4.3 3.2 2.9 3.5 0.0 2.1 4.1 0.3 0.5 6.0 4.1 5.0 3.3 3.3 3.7 .. .. .. .. 11.5 1.9

3.4 5.0 6.8 6.9 4.6 5.7 4.6 5.7 6.2 5.2 4.2 8.6 8.6 9.2 6.2 7.7 4.9 1.1 9.0 5.6 6.5 10.8 5.7 6.5 8.6 6.0 4.1 4.1 6.5 1.3 0.1 13.3 7.4 7.8 5.3 5.6 6.3 .. .. .. .. 14.0 5.7

-0.5 1.5 2.8 1.1 0.3 2.3 3.1 2.9 2.7 2.0 1.5 3.7 5.2 1.1 2.8 4.4 1.9 -1.7 -0.4 0.0 5.5 4.0 -2.1 2.8 3.3 1.9 1.3 1.1 2.7 -0.2 -0.5 5.5 2.2 2.1 2.0 2.1 1.8 .. .. .. .. 3.8 6.6

1.1 0.1 -0.2 0.4 2.6 0.2 1.3 2.7 0.3 -0.1 0.0 -2.1 1.1 -4.4 1.3 0.4 0.0 0.5 -3.0 0.2 0.2 -1.0 3.1 2.0 -0.8 -0.8 -0.3 0.4 0.0 -2.0 -0.1 4.5 1.1 0.4 -0.1 0.0 0.3 .. .. .. .. 2.2 6.0

3.1 -0.4 -2.5 2.5 8.6 1.0 -0.5 0.3 -0.5 -1.3 -0.4 -2.8 0.6 -0.7 -0.5 -1.4 -0.7 2.8 -2.1 -0.2 2.4 -2.1 0.6 1.4 -1.9 -2.1 -1.8 -0.5 -1.4 1.7 -0.7 11.4 -1.4 0.8 -0.9 -0.9 0.7 .. .. .. .. 5.6 7.4

1 2 http://dx.doi.org/10.1787/888933336516

PPI: domestic manufacturing Average annual growth in percentage 3-year average at end of period ( 2012-14)

3-year average at beginning of period ( 2002-04) 14

27

10

8

6

4

2

0

-2

1 2 http://dx.doi.org/10.1787/888933335389

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PRICES • PRICES AND INTEREST RATES

LONG-TERM INTEREST RATES Long-term interest rates are one of the determinants of business investment. Low long-term interest rates encourage investment in new equipment; investment is, in turn, a major source of economic growth.

Definition

Comparability Comparability of these data is considered to be high. There may be differences, however, in the size of government bonds outstanding, and in the extent to which these rates are representatives of financial conditions in various countries.

Long-term interest rates as measured here refer to government bonds with a residual maturity of about ten years. They are not the interest rates at which the loans were issued, but the interest rates implied by the prices at which these government bonds are traded on financial markets. For example if a bond was initially bought at a price of 100 with an interest rate of 9%, but it is now trading at a price 90, the interest rate shown here will be 10% ([9/90] × 100). Long-term interest are, where possible, averages of daily rates. In all cases, they refer to bonds whose capital repayment is guaranteed by governments. Long-term interest rates are mainly determined by three factors: the price that lenders charge for postponing consumption; the risk that the borrower may not repay the capital; and the fall in the real value of the capital that the lender expects to occur because of inflation during the lifetime of the loan. Interest rates refer to government borrowing and the risk factor is assumed to be very low. To an important extent the interest rates are driven by expected inflation rates.

Overview Long-term interest rates peaked in 1981 for most OECD countries (for example, French government bonds reached 16.3%) but since then, rates have consistently and gradually decreased to hit historic low levels in 2014. For example, in 2014 long-term interest rates in the euro area fell to a low of 2.3%, while both Japan and Switzerland saw their long-term interest rates fall below 1%, (0.5% and 0.7% respectively). From the end of the nineties to the start of the global financial crisis, the spread for 10-year bonds of European countries, vis-a-vis German bonds was small (around 0.1%). After 2008, in Greece, Ireland and Portugal spreads rose to 21.0 (2012), 7.0 (2011) and 9.1 (2012) respectively. The spreads also increased for Italy and Spain but to a lesser extent. In 2014 there were only three OECD countries with long-term interest rates above 6%, namely Greece (6.9%), Iceland (6.4%) and Mexico (6.0%). Non-member countries for which data is available recorded higher rates e.g. 8.5% in Russia and 8.3% in South Africa.

Sources • OECD (2015), Main Economic Indicators, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2014), OECD Journal: Financial Market Trends, OECD Publishing. • OECD (2014), OECD Sovereign Borrowing Outlook, OECD Publishing. • OECD (2008), Understanding Economic Statistics: An OECD Perspective, OECD Publishing.

Methodological publications • OECD (1998), Main Economic Indicators – Sources and Methods: Interest Rates and Share Price Indices, OECD Publishing.

Websites • Main Economic Indicators, www.oecd.org/std/mei.

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PRICES • PRICES AND INTEREST RATES LONG-TERM INTEREST RATES

Long-term interest rates Percentage Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Euro area Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

5.84 4.96 4.89 5.29 .. 4.88 5.06 .. 4.98 4.86 4.78 5.12 7.09 7.96 4.99 9.23 5.03 1.26 6.59 4.68 10.13 4.89 6.53 6.38 7.36 5.01 6.94 .. 4.96 5.30 3.20 .. 4.89 4.61 4.92 .. .. .. .. 15.82 11.50

5.37 4.14 4.15 4.81 .. 4.12 4.31 .. 4.14 4.13 4.07 4.27 6.77 6.65 4.13 8.88 4.30 1.00 5.05 3.32 8.98 4.12 5.87 5.05 5.78 4.18 4.99 6.40 4.12 4.64 2.66 .. 4.53 4.02 4.16 .. .. .. .. 9.12 9.62

5.59 4.13 4.06 4.58 .. 4.82 4.30 .. 4.11 4.10 4.04 4.26 8.29 7.49 4.06 7.56 4.26 1.49 4.73 2.84 9.54 4.10 6.07 4.37 6.90 4.14 5.03 4.68 4.10 4.43 2.74 .. 4.88 4.27 4.14 .. .. .. .. 8.29 9.53

5.34 3.39 3.37 4.07 6.05 3.54 3.40 .. 3.35 3.41 3.35 3.59 6.60 8.64 3.32 6.36 3.56 1.35 4.95 2.41 9.42 3.37 5.88 3.75 5.22 3.44 3.52 3.81 3.39 3.38 2.10 .. 4.41 4.29 3.44 .. .. .. .. 8.11 8.07

5.59 3.80 3.81 4.21 6.16 3.80 3.81 .. 3.78 3.80 3.76 4.07 7.12 8.83 3.79 6.31 4.05 1.74 5.15 3.30 8.39 3.78 5.78 4.08 5.23 3.91 4.41 3.85 3.78 3.70 2.52 .. 4.50 4.79 3.86 .. .. .. .. 6.98 7.94

5.99 4.30 4.33 4.27 6.09 4.30 4.29 .. 4.29 4.30 4.22 4.50 6.74 9.42 4.33 5.55 4.49 1.67 5.35 .. 7.79 4.29 6.27 4.77 5.48 4.42 4.49 4.53 4.31 4.17 2.93 .. 5.01 4.63 4.33 .. .. .. .. 6.72 7.99

5.82 4.36 4.40 3.61 7.10 4.63 4.28 .. 4.29 4.23 3.98 4.80 8.24 11.07 4.55 5.92 4.68 1.47 5.57 .. 8.31 4.23 6.08 4.46 6.07 4.52 4.72 4.61 4.36 3.89 2.90 .. 4.59 3.67 4.36 .. .. .. .. 7.52 9.10

5.04 3.94 3.82 3.23 5.71 4.84 3.59 .. 3.74 3.65 3.22 5.17 9.12 8.26 5.23 5.06 4.31 1.33 5.17 .. 7.96 3.69 5.46 4.00 6.12 4.21 4.71 4.38 3.97 3.25 2.20 .. 3.65 3.26 4.03 .. .. .. .. 9.87 8.70

5.37 3.23 3.35 3.24 6.27 3.88 2.93 .. 3.01 3.12 2.74 9.09 7.28 6.09 5.99 4.68 4.04 1.15 4.77 2.95 6.90 2.99 5.60 3.53 5.78 5.40 3.87 3.83 4.25 2.89 1.63 .. 3.62 3.21 3.78 .. .. .. .. 7.83 8.62

4.88 3.32 4.18 2.78 6.03 3.71 2.73 .. 3.01 3.32 2.61 15.75 7.64 5.98 9.58 4.98 5.42 1.10 4.20 2.92 6.67 2.99 4.95 3.14 5.96 10.24 4.42 4.97 5.44 2.61 1.47 .. 3.14 2.79 4.31 .. .. .. .. 8.06 8.52

3.38 2.37 2.96 1.87 5.47 2.78 1.40 .. 1.88 2.54 1.50 22.50 7.89 6.19 5.99 4.40 5.49 0.84 3.45 1.83 5.60 1.93 3.69 2.10 5.00 10.55 4.55 5.81 5.85 1.59 0.65 .. 1.92 1.80 3.05 .. .. .. .. 8.15 7.90

3.70 2.01 2.37 2.26 5.35 2.11 1.75 .. 1.86 2.20 1.57 10.05 5.92 5.79 3.83 3.80 4.32 0.69 3.28 1.83 5.68 1.96 4.09 2.58 4.03 6.29 3.19 5.81 4.56 2.12 0.95 .. 2.39 2.35 3.01 .. .. .. .. 7.33 7.72

3.66 1.49 1.74 2.23 4.69 1.58 1.33 .. 1.45 1.67 1.16 6.93 4.81 6.37 2.26 2.89 2.89 0.52 3.19 1.34 6.01 1.45 4.30 2.52 3.52 3.75 2.07 3.27 2.72 1.72 0.69 .. 2.57 2.54 2.28 .. .. .. .. 8.46 8.25

1 2 http://dx.doi.org/10.1787/888933336351

Long-term interest rates Percentage 2014 or latest available year

2002 or first available year 16

14 12 10 8 6 4 2 0

1 2 http://dx.doi.org/10.1787/888933335187

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PRICES • PURCHASING POWER PARITIES AND EXCHANGE RATES

RATES OF CONVERSION Purchasing power parities and exchange rates

To compare a single country’s real GDP over a period of years, it is necessary to remove movements that are due to price changes. In the same way, in order to compare the real GDPs of a group of countries at a single point in time, it is necessary to remove any differences in their GDPs that are due to differences in their price levels. Price indices are used to remove the effects of price changes in a single country over time; purchasing power parities (PPPs) are used to remove the effects of the different levels of prices within a group of countries at a point in time. Market exchange rates are sometimes used to convert national GDPs into a common currency. However, comparisons of GDP based on exchange rates do not reflect well the real volumes of goods and services in the different countries. For many of the low-income countries, for example, the differences between GDP converted using market exchange rates and GDP converted using PPPs are considerable. In general, the use of market exchange rates understates the real GDP of low-income countries and overstates the real GDP of high-income countries.

Definition

government services, capital formation and net exports. Prices for the different items are weighted by their shares in total final expenditure to obtain the PPPs for GDP shown here. Comparative price level indices are the ratios of PPPs to market exchange rates. At the level of GDP they provide a measure of the differences in the general price levels of countries.

Comparability PPPs for the OECD and Russia have been calculated jointly by the OECD and Eurostat using standard procedures. In consultation with their member countries, OECD and Eurostat keep their methodology under review and improvements are made regularly. PPPs for non-OECD countries, with the exception of Russia, are calculated within the framework of the International Comparison Programme (ICP). There are six regions in the ICP programme, of which five – Africa, Asia-Pacific, the Commonwealth of Independent States (CIS), Latin America and Caribbean and Western Asia – are regions overseen by the ICP Global Office at the World Bank.

PPPs are currency converters that equalise price levels between countries. PPPs have been calculated by comparing the prices in OECD countries of a common basket of about 2 500 goods and services. Countries are not required to price all the items in the common basket because some of the items may be hard to find in certain countries. However, the common basket has been drawn up in such a way that each country can collect prices for a wide range of the goods and services that are representative of their markets. The goods and services to be priced cover all those that enter into final expenditure: household consumption,

Sources

Overview Over the period 2002-14, there were significant differences between changes in PPPs and changes in market exchange rates; even when the two indicators moved in the same direction, changes differed in their magnitude. Price level indices are PPPs estimates for 2014 divided by market exchange rates for the same year, with the OECD set equal to 100. In general, there is a positive correlation between GDP levels and price levels. Australia, Norway and Switzerland, three OECD countries with high per capita income, also recorded the highest price levels in 2014, exceeding the average OECD level by 40% or more, while India had price levels of around 30% of the OECD average. Changes in price level indices should however be interpreted with caution as they are highly dependent on changes in exchange rates.

92

• OECD (2013), “PPP benchmark results 2011”, OECD National Accounts Statistics (Database). • For Brazil, China, Indonesia and South Africa, World development indicators (2014), World Bank, http:// data.worldbank.org/data-catalog/world-developmentindicators.

Further information Analytical publications • OECD (2008), Understanding Economic Statistics: An OECD Perspective, OECD Publishing.

Online databases • OECD (2015), OECD National Accounts Statistics (Database).

Statistical publications • OECD (2014), National Accounts at a Glance, OECD Publishing.

Websites • Prices and Purchasing Power Parities (PPP), www.oecd.org/ std/ppp. OECD FACTBOOK 2015-2016 © OECD 2016

PRICES • PURCHASING POWER PARITIES AND EXCHANGE RATES RATES OF CONVERSION

Purchasing power parities and indices of price levels Purchasing power parities

Indices of price levels

National currency units per US dollar

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 Brazil China India Indonesia Russian Federation South Africa

OECD = 100

2009

2010

2011

2012

2013

2014

2009

2010

2011

2012

2013

2014

1.443 0.844 0.858 1.204 353.070 13.899 7.833 0.524 0.903 0.861 0.809 0.697 125.553 124.992 0.892 3.964 0.779 115.497 824.761 0.907 7.432 0.841 1.470 8.956 1.864 0.633 0.511 0.644 0.709 8.915 1.519 0.912 0.656 1.000 0.752 1.311 3.147 13.182 3 181.203 14.019 4.322

1.505 0.841 0.854 1.221 357.334 13.954 7.755 0.524 0.911 0.857 0.796 0.702 125.461 131.845 0.843 3.971 0.780 111.633 840.569 0.922 7.670 0.849 1.494 9.014 1.820 0.632 0.510 0.641 0.717 8.995 1.509 0.941 0.691 1.000 0.763 1.402 3.316 14.194 3 402.693 15.815 4.598

1.511 0.835 0.840 1.240 348.017 13.398 7.599 0.524 0.908 0.844 0.784 0.700 124.821 134.752 0.832 3.945 0.769 107.454 854.586 0.894 7.673 0.830 1.486 8.985 1.828 0.620 0.518 0.630 0.704 8.853 1.433 0.992 0.700 1.000 0.755 1.471 3.506 15.109 3 606.566 17.346 4.774

1.522 0.839 0.843 1.246 350.295 13.430 7.664 0.539 0.918 0.853 0.786 0.688 127.936 136.698 0.832 3.964 0.764 104.628 860.249 0.898 7.929 0.830 1.481 8.903 1.834 0.593 0.519 0.615 0.688 8.824 1.397 1.051 0.695 1.000 0.760 1.517 3.514 15.915 3 699.950 18.043 4.901

1.522 0.844 0.850 1.252 354.907 13.393 7.673 0.551 0.932 0.854 0.794 0.645 129.279 138.204 0.832 4.006 0.762 104.090 860.219 0.915 8.042 0.829 1.468 9.204 1.822 0.589 0.513 0.608 0.680 8.807 1.379 1.112 0.699 1.000 0.755 1.608 3.521 16.762 3 803.351 18.425 5.110

1.536 0.835 0.838 1.261 370.814 13.332 7.586 0.564 0.939 0.829 0.787 0.626 132.000 140.228 0.841 4.006 0.758 105.270 857.261 0.900 8.023 0.825 1.469 9.455 1.828 0.588 0.503 0.604 0.676 8.950 1.370 1.199 0.708 1.000 0.755 1.667 3.655 17.689 3 941.790 19.066 5.342

111 116 117 104 62 72 144 72 124 118 111 95 61 100 122 99 107 122 64 124 54 115 90 140 59 87 70 88 97 115 137 58 101 98 103 65 45 27 30 44 50

135 109 111 116 68 71 135 68 118 111 103 91 59 105 109 104 101 124 71 119 59 110 105 146 59 82 66 83 93 122 142 61 104 98 99 78 48 30 37 51 61

148 110 111 119 68 72 135 69 120 112 104 93 59 110 110 105 102 128 73 118 59 110 112 152 59 82 69 83 93 130 153 56 107 95 100 84 52 31 39 56 62

155 106 106 122 71 67 130 68 116 108 99 87 56 107 105 101 96 129 75 113 59 105 118 150 55 75 65 78 87 128 146 57 108 98 96 76 55 29 39 57 59

146 112 112 121 71 68 136 73 123 113 105 85 58 113 110 111 101 106 78 121 63 110 120 156 57 78 68 80 90 135 148 58 109 100 100 74 57 28 36 58 53

140 112 112 115 66 65 137 76 126 111 106 84 57 121 113 113 102 100 82 121 61 111 123 152 59 79 67 81 91 132 151 55 118 101 101 72 60 29 34 50 50

1 2 http://dx.doi.org/10.1787/888933336563

Indices of price levels OECD = 100, 2014 150

151 152

140 130 120 110 100 90 80 70 60 50 40 30 20 10 0

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PRICES • PURCHASING POWER PARITIES AND EXCHANGE RATES

REAL EFFECTIVE EXCHANGE RATES Effective exchange rates are a summary measure of the changes in the exchange rates of a country vis-à-vis its trading partners. They provide a broad interpretation of a country’s price competitiveness, which is, in turn, a major determinant of the success of different countries in raising exports and productivity, fostering innovation and improving living standards.

Definition Nominal effective exchange rate indices are calculated by comparing, for each country, the change in its own exchange rate against the US dollar to a weighted average of changes in its competitors’ exchange rates, also against the US dollar. Changes in the competitor exchange rates are weighted using a matrix measuring the importance of bilateral trade flows in the current year. The indicator of real effective exchange rates, i.e. relative consumer price indices, takes into account not only changes in market exchange rates but also variations in relative prices using consumer prices. The change in a country’s relative consumer prices between two years is obtained by comparing the change in the country’s consumer price index converted into US dollars at market exchange rates to a weighted average of changes in its competitors’ consumer price indices, also expressed in US dollars. The weighted average of competitors’ prices is based on a matrix for the current year expressing the importance of bilateral trade.

Comparability The index is constructed using a common procedure that assures a high degree of comparability both across countries and over time. A rise in the index represents a deterioration in that country’s competitiveness. Real effective exchange rates are a major short-run determinant of any country’s capacity to compete. Note that the index only shows changes in the international competitiveness of each country over time. Differences between countries in the levels of the indices have no significance. Real effective exchange rates try to eliminate the weakness in the nominal effective exchange rates - namely that potential competitiveness gains from exchange rate depreciations can be eroded by domestic inflation - by correcting effective nominal exchange rates for differences in inflation rates. Consumer prices are usually used to make the correction because they are readily available. However, this implicitly assumes that the relative price of domestic tradable goods as compared with foreign tradables evolves in parallel to the relative consumer prices, which is often not the case.

Overview From around 2009 to 2012, France, Germany, Italy, Japan, the United Kingdom and the United States saw virtually no change in their real effective exchange rate. However since 2012, while rates for France, Germany, Italy and the United States have remained stable, Japan has seen a major gain in its international competitiveness, as measured by the drop in its real effective exchange rate, while the United Kingdom has seen its international competitiveness deteriorate. C o m m o d i t y ex p o r t i n g c o u n t r i e s a l s o s aw a n improvement in international competitiveness in the last few years (Australia, Canada, Chile and Norway) along with the Czech Republic, Sweden and Turkey. Iceland, Korea and New Zealand, on the other hand, all recorded drops in their international competitiveness over the last few years. For non-OECD countries, with the exception of China, all have seen their international competitiveness improve; and in the case of Indonesia and South Africa quite substantially since 2010.

94

Sources • OECD (2015), OECD Economic Outlook, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Surveys, OECD Publishing.

Statistical publications • OECD (2015), Main Economic Indicators, OECD Publishing.

Online databases • OECD Economic Outlook: Statistics and Projections.

Websites • Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods. OECD FACTBOOK 2015-2016 © OECD 2016

PRICES • PURCHASING POWER PARITIES AND EXCHANGE RATES REAL EFFECTIVE EXCHANGE RATES

Real effective exchange rates Based on consumer price indices, 2010 = 100 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

69.6 99.1 94.1 73.8 89.0 79.7 95.0 86.5 103.1 97.7 100.3 88.0 87.4 125.4 89.4 102.9 96.6 105.1 107.0 94.3 123.4 98.6 82.3 98.8 99.6 97.9 61.2 95.8 91.0 104.2 98.5 73.7 127.5 124.1 55.8 95.8 88.5 81.1 66.3 74.1

78.6 102.3 99.0 81.6 83.0 78.1 100.1 89.6 107.8 103.0 105.3 93.5 89.5 132.2 98.2 96.8 102.5 105.7 108.2 98.0 109.7 104.2 94.2 98.3 89.0 102.1 69.5 99.3 95.9 110.8 99.1 78.2 121.7 116.8 53.7 89.4 87.0 87.0 67.2 97.1

85.1 103.4 100.9 85.7 88.7 79.0 101.0 91.2 107.6 104.8 106.7 95.8 95.4 135.7 100.7 90.3 104.3 107.0 109.8 99.4 105.1 105.0 101.2 94.0 88.1 103.2 76.2 99.5 98.1 111.3 98.1 80.9 126.3 111.8 55.9 86.7 86.0 83.0 72.5 103.8

87.6 102.5 100.7 90.8 94.3 83.3 99.8 91.4 104.2 103.4 104.5 95.9 96.9 153.4 100.4 87.7 102.8 100.5 122.7 99.1 108.9 103.5 106.7 97.3 97.8 102.3 77.7 98.4 98.5 106.4 95.9 89.6 123.9 110.0 69.2 85.7 88.1 81.7 80.4 104.0

87.4 101.7 100.2 95.9 98.7 87.5 99.4 92.2 102.6 102.7 103.5 96.6 92.1 143.1 102.1 87.2 102.3 90.8 131.1 99.7 108.9 102.2 99.0 96.9 99.4 102.8 81.6 98.4 99.8 105.7 93.1 88.8 124.4 109.2 77.6 87.1 87.2 94.8 88.7 98.5

92.9 102.1 100.9 98.7 97.1 89.9 99.9 95.8 103.6 103.1 104.8 98.0 102.5 148.7 107.1 87.7 102.8 83.2 129.1 100.6 107.6 102.5 106.0 96.9 102.6 103.5 90.0 99.9 101.3 106.8 88.8 96.1 126.0 104.3 83.6 90.1 93.5 94.3 93.0 91.6

91.0 102.2 103.5 96.0 98.5 102.9 101.4 101.7 105.1 103.8 104.8 99.8 105.2 116.4 112.0 97.7 103.6 89.8 105.0 101.6 105.5 103.0 98.9 97.5 111.7 103.6 97.5 102.2 103.4 104.3 92.3 97.0 109.7 100.3 87.9 97.9 88.9 90.4 99.3 80.0

88.2 103.0 103.6 92.0 94.9 99.0 104.4 103.4 106.7 104.0 105.7 101.4 99.2 95.0 107.9 95.5 104.9 100.5 93.1 102.3 92.8 104.8 92.6 95.5 94.8 102.9 104.7 103.7 103.4 94.4 96.3 91.3 99.5 104.8 87.9 102.0 90.2 89.5 91.1 87.3

100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0 100.0

106.9 100.4 100.9 101.5 101.1 102.0 99.4 101.2 99.6 99.3 99.0 100.7 99.8 101.0 100.2 101.1 99.9 101.2 100.0 100.5 100.1 99.4 103.8 100.7 98.2 100.8 100.9 99.0 100.5 105.8 109.7 88.4 100.6 95.3 104.8 102.2 99.1 99.8 104.0 98.1

108.4 98.8 98.7 101.1 103.7 98.8 96.8 100.1 96.9 96.3 95.7 96.8 96.8 101.5 95.7 96.2 97.9 99.9 99.7 99.0 97.3 96.9 106.6 100.3 95.7 99.5 100.4 97.2 98.2 105.3 105.6 91.7 105.0 97.7 94.8 108.0 94.6 96.1 105.9 92.3

103.7 100.8 100.2 97.6 103.1 96.6 97.7 102.9 98.6 97.4 97.8 95.9 96.0 105.4 97.2 102.3 99.5 80.2 103.7 100.4 102.7 99.8 109.4 98.6 96.0 99.6 101.8 98.8 99.9 106.4 103.7 90.3 103.6 97.8 89.9 114.6 93.7 92.0 107.5 81.8

99.0 102.6 100.6 92.0 94.2 91.5 98.9 104.8 101.4 97.8 99.0 95.5 92.5 113.1 96.9 103.6 100.1 76.0 109.9 100.8 101.8 101.0 113.1 93.8 97.1 99.3 102.5 99.5 99.8 101.3 104.8 86.1 111.3 100.1 88.6 117.4 96.4 85.7 97.1 77.0

1 2 http://dx.doi.org/10.1787/888933336329

Real effective exchange rates based on consumer price indices 2010 = 100 France

Germany

Italy

Japan

United Kingdom

United States

140 130 120 110 100 90 80 70

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ENERGY AND TRANSPORTATION ENERGY REQUIREMENTS ENERGY SUPPLY ENERGY INTENSITY ELECTRICITY GENERATION NUCLEAR ENERGY RENEWABLE ENERGY OIL PRODUCTION OIL PRICES

TRANSPORT GOODS TRANSPORT PASSENGER TRANSPORT ROAD FATALITIES

ENERGY AND TRANSPORTATION • ENERGY REQUIREMENTS

ENERGY SUPPLY Energy requirements

Basic supply and demand data for all fuels are required to compare the contribution that each fuel makes to the economy and their interrelationships through the conversion of one fuel into another.

Definition Energy supply refers to total primary energy supply (TPES). TPES equals production plus imports minus exports minus international bunkers plus or minus stock changes. The International Energy Agency (IEA) energy balance methodology is based on the calorific content of the energy commodities and a common unit of account. The unit of account adopted is the tonne of oil equivalent (toe) which is defined as 10 7 kilocalories (41.868 gigajoules). This quantity of energy is, within a few per cent, equal to the net heat content of one tonne of crude oil. The difference between the “net” and the “gross” calorific value for each fuel is the latent heat of vaporisation of the water produced during combustion of the fuel. For coal and oil, net calorific value is about 5% less than gross, for most forms of natural and manufactured gas the difference is 9-10%, while for electricity there is no difference. The IEA balances are calculated using the physical energy content method to calculate the primary energy equivalent.

Comparability Data quality is not homogeneous for all countries and regions. In some countries, data are based on secondary sources, and where incomplete or unavailable, the IEA has made estimates. In general, data are likely to be more accurate for production and trade than for international bunkers or stock changes. Moreover, statistics for biofuels and waste are less accurate than those for traditional commercial energy data.

Overview Between 1971 and 2013, the world’s total primary energy supply more than doubled, reaching 13 541 Mtoe (million tonnes of oil equivalent). This equates to a compound growth rate of 2.2% per year. By comparison, world population grew on average by 1.5% and gross domestic product by 3.0% per year in real terms over the same period. Energy supply growth was fairly constant over the period, except in 1974-75 and in the early 1980s as a consequence of the first two oil shocks, and in the early 1990s following the dissolution of the Soviet Union. With the economic crisis in 2008/2009, world energy supply declined by 1% in 2009. However, energy supply rebounded in 2010, increasing by 5% and kept growing by 3% in 2013. The share of OECD in world primary energy supply decreased from 61% in 1971 to 39% in 2013. Strong economic development in Asia led to a large increase in the share of non-OECD Asia (including China) in world energy supply, from 13% to 35% over the same period. By contrast, the combined share of non-OECD Europe and Eurasia (which includes the Former Soviet Union) decreased significantly in the late 1980s and early 1990s.

Sources • International Energy Agency (IEA) (2015), Energy Balances of OECD Countries, IEA, Paris. • IEA (2015), Energy Balances of Non-OECD Countries, IEA, Paris.

Further information Analytical publications • IEA (2015), Coal Information, IEA, Paris. • IEA (2015), Energy Policies of IEA Countries (series), IEA, Paris. • IEA (2015), Energy Technology Perspectives, IEA, Paris. • IEA (2015), Natural Gas Information, IEA, Paris • IEA (2015), Oil Information, IEA, Paris. • IEA (2015), Renewables Information, IEA, Paris. • IEA (2015), World Energy Outlook, IEA, Paris.

Online databases • IEA World Energy Statistics and Balances.

Websites • International Energy Agency, www.iea.org.

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Total primary energy supply Million tonnes of oil equivalent (Mtoe) Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1971

1990

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

51.6 18.8 39.7 141.4 8.7 45.4 18.5 .. 18.2 158.6 305.1 8.7 19.0 0.9 6.7 5.7 105.4 267.5 17.0 4.1 43.0 50.9 6.8 13.3 86.1 6.3 14.3 .. 42.6 36.0 16.4 19.5 208.7 1 587.5 .. 3 372.3 69.8 391.1 152.2 35.1 .. 45.4 5 522.5

86.4 24.8 48.3 208.6 14.0 49.6 17.4 9.8 28.4 224.0 351.2 21.4 28.8 2.3 9.9 11.5 146.6 439.3 92.9 3.4 122.5 65.7 12.8 21.1 103.1 16.8 21.3 5.7 90.1 47.2 24.4 52.7 205.9 1 915.1 1 644.8 4 522.7 140.2 870.7 306.6 98.6 879.2 91.0 8 768.2

112.7 32.7 59.0 267.6 27.5 45.5 19.4 5.3 37.2 269.8 339.5 29.7 26.1 3.1 14.5 19.2 181.6 522.6 208.3 4.3 160.8 79.1 17.3 26.5 91.0 25.8 18.4 7.1 139.0 52.6 26.1 80.7 221.6 2 307.8 1 782.2 5 479.3 210.0 1 639.0 498.0 176.7 647.4 128.5 11 203.3

113.5 33.8 58.8 270.3 28.4 44.9 18.9 5.2 34.3 271.1 337.0 30.3 27.6 3.1 14.6 18.4 183.6 520.5 210.3 4.4 168.7 78.4 16.9 26.8 92.1 26.5 18.8 7.3 141.9 51.6 25.9 84.2 222.7 2 318.8 1 787.4 5 509.4 215.3 1 775.3 517.7 179.8 651.7 128.3 11 480.9

118.2 33.8 58.2 267.1 29.5 46.0 20.3 5.1 37.4 267.0 346.4 30.2 27.3 3.9 14.6 20.3 181.2 519.8 213.7 4.3 170.9 76.8 16.9 27.2 96.8 25.2 18.6 7.3 141.8 50.2 27.1 93.2 219.0 2 296.8 1 793.4 5 512.1 222.8 1 937.9 544.5 184.0 670.7 127.3 11 807.0

122.2 33.4 57.3 267.4 30.6 46.0 19.8 5.7 36.9 263.8 327.9 30.2 26.7 4.6 15.0 20.8 179.0 515.2 222.2 4.2 175.5 79.4 17.1 27.6 96.3 25.3 17.9 7.3 143.8 50.1 25.8 100.0 211.1 2 337.0 1 763.7 5 543.1 235.5 2 043.4 573.7 183.2 672.6 136.3 12 082.9

126.7 33.6 59.0 265.1 30.3 45.0 19.2 5.5 35.4 265.0 331.5 30.4 26.5 5.2 14.8 22.9 175.4 495.4 227.1 4.2 180.8 79.6 17.4 32.2 97.8 24.7 18.3 7.7 139.1 49.6 26.8 98.7 207.7 2 277.1 1 755.9 5 475.5 248.6 2 087.9 600.4 186.8 688.5 146.9 12 220.9

127.2 32.0 56.8 249.9 29.5 42.1 18.4 4.9 33.4 253.6 310.5 29.4 24.9 5.4 14.3 21.5 164.4 472.3 229.3 4.0 175.3 78.2 17.5 31.3 94.1 24.4 16.7 7.0 127.9 45.4 27.0 97.8 195.8 2 164.8 1 655.5 5 226.8 240.5 2 253.4 662.1 200.0 647.0 144.0 12 135.7

124.5 34.1 61.0 251.4 30.9 44.4 19.5 5.6 36.6 261.7 326.9 27.6 25.7 5.4 14.4 23.2 170.0 498.9 250.0 4.2 176.3 83.4 18.4 33.9 100.4 23.5 17.8 7.3 127.8 50.9 26.2 105.3 202.4 2 215.4 1 721.5 5 404.8 265.9 2 469.1 692.7 209.4 689.7 141.8 12 789.0

126.0 33.1 57.6 257.0 33.6 42.8 18.0 5.6 35.2 251.8 310.7 26.8 25.0 5.8 13.2 23.1 166.9 462.0 260.5 4.2 183.6 77.4 18.3 28.0 101.0 22.9 17.4 7.3 125.7 49.8 25.4 112.2 187.7 2 191.2 1 658.1 5 306.6 270.0 2 801.2 716.4 205.3 723.0 142.7 13 133.7

126.3 33.1 54.4 252.3 37.2 42.6 17.3 5.5 33.9 252.4 311.8 26.6 23.5 5.7 13.2 24.3 161.3 452.0 263.5 4.1 188.7 78.6 19.3 29.7 97.7 21.7 16.7 7.0 125.5 50.2 25.6 116.9 192.9 2 139.8 1 646.2 5 251.2 281.7 2 907.9 752.0 211.8 741.0 140.3 13 327.9

129.1 33.2 56.4 253.2 38.7 42.0 17.5 6.1 33.0 253.3 317.7 23.4 22.6 5.9 13.1 23.9 155.4 454.7 263.8 4.0 191.3 77.4 19.5 32.7 97.6 21.8 17.2 6.9 116.7 49.3 26.7 116.5 191.0 2 188.4 1 625.6 5 299.6 293.7 3 009.5 775.5 213.6 730.9 141.3 13 541.3

128.7 32.1 54.0 257.6 38.8 41.5 16.4 6.1 34.2 242.1 303.6 22.5 22.6 5.8 12.8 23.4 146.2 441.2 265.3 3.8 189.4 72.3 20.1 30.1 94.9 21.1 15.4 6.8 113.9 46.7 25.2 119.4 177.8 2 206.0 .. 5 237.6 .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336800

Total primary energy supply by region Million tonnes of oil equivalent (Mtoe) OECD total OECDChina total Non-OECD Americas China Asia excluding

Middle East Africa

Africa Non-OECD Non-OECD Americas Europe and Eurasia Bunkers World aviation bunkers

Middle East Other Asia ChinaNon-OECD Europe and Eurasia World marine bunkers

14 000 12 000 10 000 8 000 6 000 4 000 2 000 0

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ENERGY INTENSITY A common way to measure and compare the energy intensity of different countries, and how this changes over time, is to look at the ratio of energy supply to GDP. Energy intensity is sometimes also used as proxy of energy efficiency. However, this use can be misleading as energy intensity depends on numerous elements beyond energy efficiency such as climate, output composition, outsourcing of goods produced by energy-intensive industries, etc.

Definition

Comparability Care should be taken when comparing energy intensities between countries and over time since different national circumstances (e.g. density of population, country size, average temperatures and economic structure) will affect the ratios. A decrease in the TPES/GDP ratio may reflect a restructuring of the economy and the transfer of energyintensive industries such as iron and steel out of the country. The harmful effects of such outsourcing may increase the global damage to the environment if the producers abroad use less energy efficient techniques.

Energy intensity refers to total primary energy supply (TPES) per thousand US dollars of GDP. The ratios are calculated by dividing each country’s annual TPES by each country’s annual GDP expressed in constant 2005 prices and converted to US dollars using purchasing power parities (PPPs) for the year 2005. TPES consists of primary energy production adjusted for net trade, bunkers and stock changes. Production of secondary energy (e.g. oil/coal products, electricity from fossil fuels, etc.) is not included since the “energy equivalent” of the primary fuels used to create the secondary products or electric power has already been counted. TPES is expressed in tonnes of oil equivalent.

Overview Sharp improvements in the efficiency of key end uses, shifts to electricity, some changes in manufacturing output and consumer behaviour have occurred in many OECD countries since 1971. As a consequence, energy supply per unit of GDP fell significantly, particularly in the 1979-1990 period. Contributing to the trend were higher fuel prices, longterm technological progress, government energy efficiency programmes and regulations. Globally the ratio of energy supply to GDP (TPES/GDP) fell less than the ratio of energy consumption to GDP (total final consumption/GDP), because of increased use of electricity. The main reason for this divergence is that losses in electricity generation outweighed intensity improvements achieved in end uses such as household appliances. A m o n g O E C D c o u n t r i e s , t h e ra t i o o f e n e rg y consumption to GDP varies considerably. Apart from energy prices, winter weather is a key element in these variations, as are raw materials processing techniques, the distance goods must be shipped, the size of dwellings, the use of private rather than public transport and other lifestyle factors.

Sources • International Energy Agency (IEA) (2015), Energy Balances of OECD Countries, IEA, Paris. • IEA (2015), Energy Balances of Non-OECD Countries, IEA, Paris.

Further information Analytical publications • IEA (2015), Energy Technology Perspectives, IEA, Paris. • IEA (2015), Energy Policies of IEA Countries (series), IEA, Paris. • IEA (2015), Tracking Clean Energy Progress 2015, IEA, Paris. • IEA (2015), World Energy Outlook, IEA, Paris. • IEA (2013), Transition to Sustainable Buildings: Strategies and Opportunities to 2050, IEA, Paris.

Online databases • IEA World Energy Statistics and Balances.

Websites • International Energy Agency, www.iea.org.

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Total primary energy supply per unit of GDP Tonnes of oil equivalent (toe) per thousand 2005 US dollars of GDP calculated using PPPs Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1971

1990

2000

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

0.21 0.16 0.26 0.34 0.18 0.37 0.21 .. 0.30 0.19 0.23 0.08 0.24 0.29 0.22 0.15 0.14 0.19 0.20 0.51 0.11 0.20 0.15 0.19 0.36 0.08 0.33 .. 0.10 0.24 0.09 0.11 0.23 0.35 .. 0.25 0.12 1.08 0.25 0.19 .. 0.22 0.27

0.20 0.12 0.19 0.27 0.16 0.28 0.13 0.60 0.24 0.16 0.17 0.12 0.21 0.34 0.15 0.13 0.11 0.13 0.20 0.21 0.14 0.16 0.20 0.15 0.33 0.10 0.33 0.17 0.12 0.21 0.10 0.12 0.15 0.23 0.16 0.18 0.11 0.58 0.22 0.14 0.47 0.28 0.22

0.18 0.11 0.19 0.25 0.15 0.22 0.11 0.30 0.22 0.14 0.13 0.12 0.18 0.36 0.10 0.12 0.11 0.14 0.20 0.13 0.12 0.13 0.20 0.13 0.20 0.11 0.26 0.16 0.12 0.18 0.09 0.12 0.12 0.20 0.14 0.16 0.11 0.29 0.19 0.15 0.49 0.28 0.19

0.16 0.12 0.17 0.23 0.14 0.20 0.10 0.23 0.20 0.14 0.13 0.11 0.16 0.29 0.09 0.11 0.11 0.13 0.18 0.14 0.13 0.13 0.16 0.12 0.18 0.11 0.21 0.15 0.12 0.17 0.09 0.11 0.11 0.18 0.13 0.15 0.11 0.28 0.16 0.14 0.38 0.27 0.18

0.16 0.12 0.16 0.22 0.14 0.19 0.11 0.21 0.21 0.14 0.13 0.10 0.15 0.35 0.08 0.11 0.10 0.13 0.17 0.13 0.12 0.12 0.16 0.12 0.17 0.11 0.19 0.15 0.11 0.16 0.09 0.11 0.10 0.17 0.13 0.15 0.11 0.27 0.15 0.13 0.37 0.26 0.17

0.16 0.11 0.16 0.22 0.13 0.18 0.10 0.21 0.20 0.13 0.12 0.10 0.15 0.38 0.08 0.11 0.10 0.13 0.17 0.12 0.12 0.12 0.15 0.12 0.16 0.11 0.17 0.14 0.11 0.15 0.08 0.11 0.10 0.17 0.12 0.14 0.11 0.25 0.15 0.13 0.34 0.26 0.17

0.16 0.11 0.16 0.22 0.13 0.17 0.10 0.22 0.19 0.13 0.12 0.10 0.15 0.42 0.08 0.12 0.10 0.12 0.17 0.12 0.12 0.12 0.16 0.14 0.16 0.10 0.16 0.14 0.11 0.15 0.08 0.11 0.10 0.17 0.12 0.14 0.11 0.23 0.15 0.12 0.33 0.27 0.17

0.16 0.11 0.16 0.21 0.13 0.17 0.10 0.23 0.20 0.13 0.12 0.10 0.15 0.46 0.09 0.11 0.10 0.13 0.17 0.12 0.13 0.12 0.16 0.14 0.15 0.10 0.16 0.14 0.10 0.14 0.09 0.12 0.09 0.16 0.12 0.14 0.11 0.23 0.15 0.12 0.34 0.27 0.16

0.15 0.11 0.17 0.20 0.12 0.17 0.11 0.25 0.21 0.13 0.12 0.10 0.15 0.48 0.09 0.11 0.10 0.13 0.18 0.12 0.12 0.13 0.16 0.15 0.15 0.10 0.16 0.14 0.10 0.15 0.08 0.12 0.10 0.16 0.12 0.14 0.11 0.23 0.14 0.12 0.34 0.26 0.17

0.15 0.11 0.15 0.20 0.13 0.16 0.10 0.24 0.20 0.12 0.11 0.11 0.14 0.50 0.08 0.10 0.10 0.12 0.18 0.12 0.12 0.12 0.16 0.12 0.15 0.10 0.15 0.14 0.10 0.15 0.08 0.11 0.09 0.16 0.11 0.14 0.11 0.23 0.14 0.11 0.34 0.25 0.16

0.15 0.11 0.15 0.19 0.13 0.16 0.09 0.22 0.19 0.12 0.11 0.11 0.14 0.48 0.08 0.11 0.10 0.11 0.17 0.12 0.12 0.12 0.17 0.12 0.14 0.10 0.14 0.14 0.10 0.15 0.08 0.12 0.09 0.15 0.11 0.13 0.11 0.23 0.14 0.11 0.34 0.24 0.16

0.14 0.11 0.15 0.19 0.13 0.16 0.09 0.24 0.19 0.12 0.11 0.10 0.13 0.48 0.08 0.10 0.10 0.11 0.17 0.11 0.12 0.12 0.16 0.13 0.14 0.10 0.15 0.14 0.10 0.14 0.08 0.11 0.09 0.15 0.11 0.13 0.11 0.22 0.13 0.10 0.33 0.24 0.16

0.14 0.10 0.14 0.19 0.13 0.16 0.09 0.23 0.20 0.12 0.10 0.10 0.12 0.46 0.07 0.10 0.09 0.11 0.17 0.10 0.12 0.11 0.16 0.12 0.13 0.09 0.13 0.13 0.09 0.13 0.07 0.11 0.08 0.15 .. 0.13 .. .. .. .. .. .. ..

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Total primary energy supply per unit of GDP Tonnes of oil equivalent (toe) per thousand 2005 US dollars of GDP calculated using PPPs 2014

2000

0.50 0.45 0.40 0.35 0.30 0.25 0.20 0.15 0.10 0.05 0.00

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ELECTRICITY GENERATION The amount of electricity generated by a country, and the breakdown of that production by type of fuel, reflects the natural resources, imported energy, national policies on security of energy supply, population size, electrification rate as well as the stage of development and rate of growth of the economy in each country.

Definition

Comparability Some countries, both OECD member and non-member countries, have trouble reporting electricity generation from autoproducer plants. In some non-member countries it is also difficult to obtain information on electricity generated by biofuels and waste. For example, electricity generated from waste biofuel in sugar refining remains largely unreported in a number of countries.

Electricity generation includes fossil fuels, nuclear, hydro (excluding pumped storage), geothermal, solar, biofuels, etc. It includes electricity produced in electricity-only plants and in combined heat and power plants. Both main activity producer and autoproducer plants are included, where data are available. Main activity producers generate electricity for sale to third parties as their primary activity. Autoproducers generate electricity wholly or partly for their own use as an activity which supports their primary activity. Both types of plants may be privately or publicly owned. Electricity generation is measured in terawatt hours, which expresses the generation of 1 terawatt (10 12 watts) of electricity for one hour.

Overview World electricity generation rose at an average annual rate of 3.6% from 1971 to 2013, greater than the 2.2% growth in total primary energy supply. This increase was largely due to more electrical appliances, the development of electrical heating in several developed countries and of rural electrification programmes in developing countries. The share of electricity production from fossil fuels has gradually fallen, from 74% in 1971 to 67% in 2013. This decrease was due to a progressive move away from oil, which fell from 21% to 4%. Oil for world electricity generation has been displaced in particular by dramatic growth in nuclear electricity generation, which rose from 2% in 1971 to 18% in 1996. However, the share of nuclear has been falling steadily since then and represented 11% in 2013. The share of coal remained stable, at 40-41%, while that of natural gas increased from 13% in 1971 to 22% in 2013. The share of hydro-electricity decreased from 23% to 16% over the same time range. Due to large development programmes in several OECD countries, the share of new and renewable energies, such as solar, wind, geothermal, biofuels and waste increased. However, these energy forms remain of limited importance: in 2013, they accounted for only around 6% of total electricity production for the world as a whole.

Sources • International Energy Agency (IEA) (2015), Energy Balances of OECD Countries, IEA, Paris. • IEA (2015), Energy Balances of Non-OECD Countries, IEA, Paris.

Further information Analytical publications • IEA (2015), World Energy Outlook, IEA, Paris. • IEA (2013), Electricity and a Climate-Constrained World, Data and Analyses, IEA, Paris. • OECD (2015), Aligning Policies for a Low-carbon Economy, OECD Publishing. • OECD (2013), Inventory of Estimated Budgetary Support and Tax Expenditures for Fossil Fuels 2013, OECD Publishing. • OECD (2013), Taxing Energy Use, A Graphical Analysis, OECD Publishing. • Cooke, D. (2011), “Empowering Customer Choice in Electricity Markets”, IEA Energy Papers, No. 2011/13.

Online databases • IEA Electricity Information Statistics. • IEA World Energy Statistics and Balances.

Websites • International Energy Agency, www.iea.org.

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Electricity generation Terawatt hours (TWh) Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1975

1990

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

73.6 34.9 40.8 277.1 8.7 45.9 18.3 .. 26.2 185.3 383.8 16.1 20.5 2.3 7.5 9.7 145.8 473.1 20.1 1.1 43.9 54.3 20.6 77.4 96.8 10.7 13.4 .. 82.1 80.6 43.0 15.6 270.8 2 011.2 .. 4 611.0 78.9 198.3 85.9 3.0 .. 74.9 6 518.7

154.3 49.3 70.3 482.0 18.4 62.3 26.0 17.2 54.4 417.2 547.7 34.8 28.4 4.5 14.2 20.9 213.1 835.5 105.4 0.6 115.8 71.9 32.3 121.6 134.4 28.4 25.5 12.4 151.2 146.0 55.0 57.5 317.8 3 202.8 2 576.3 7 629.1 222.8 621.3 292.7 32.7 1 082.2 165.4 11 826.1

229.6 61.9 84.4 599.9 51.2 83.8 40.4 10.3 85.8 568.7 611.1 58.8 33.7 8.6 25.2 47.3 295.8 1 068.3 366.6 3.4 232.6 102.4 42.5 110.1 152.6 44.8 30.5 15.3 276.7 151.7 63.9 150.7 391.3 4 148.1 3 269.5 10 247.9 387.5 2 204.8 684.0 120.2 929.9 240.9 17 519.3

228.3 64.1 85.7 625.0 52.5 81.9 36.2 10.2 70.6 571.4 615.8 59.4 35.8 8.7 25.6 48.6 296.8 1 089.9 387.9 3.3 243.8 100.2 43.0 137.2 155.4 46.2 31.4 15.1 289.4 158.4 57.8 162.0 395.4 4 268.9 3 290.1 10 502.0 403.0 2 502.5 715.7 127.5 951.2 242.1 18 282.2

232.7 62.1 84.3 610.5 55.3 83.7 45.6 9.7 82.3 569.6 632.7 60.2 35.9 9.9 27.1 50.6 307.7 1 094.8 402.3 3.5 249.5 98.4 43.6 121.2 160.8 48.6 31.3 15.1 295.6 143.3 62.1 176.3 393.4 4 275.0 3 335.2 10 574.7 419.3 2 869.8 773.8 133.1 993.9 250.9 18 990.6

243.0 62.6 87.5 629.3 58.5 87.8 39.3 12.2 81.2 564.1 633.7 62.7 40.0 12.0 27.8 53.8 308.2 1 125.5 425.9 3.2 257.3 105.2 43.7 136.1 158.8 46.9 27.9 15.0 301.8 148.8 66.4 191.6 393.0 4 323.9 3 349.9 10 774.8 445.1 3 287.5 823.6 142.2 1 013.4 260.5 19 826.3

243.1 64.5 83.6 632.0 59.7 83.2 36.6 10.6 77.4 569.0 634.4 62.9 40.0 16.5 29.9 57.0 313.5 1 075.5 443.9 2.7 261.9 107.6 43.8 141.2 154.7 45.5 28.8 16.4 311.0 149.9 67.0 198.4 384.8 4 343.0 3 354.8 10 790.1 463.1 3 482.0 848.4 149.3 1 038.4 255.5 20 216.6

248.7 66.3 89.8 609.1 60.7 81.7 36.4 8.8 72.1 530.8 590.0 61.1 35.9 16.8 28.0 55.0 288.3 1 043.4 451.7 3.2 261.0 113.5 43.5 131.0 151.1 49.5 25.9 16.4 291.9 136.6 66.7 194.8 373.0 4 165.4 3 190.6 10 398.0 466.1 3 742.0 917.3 156.8 990.0 246.8 20 161.6

252.2 67.9 93.8 599.0 60.4 85.3 38.9 13.0 80.7 564.4 626.6 57.4 37.4 17.1 28.4 58.6 298.8 1 108.7 496.7 3.2 271.1 118.1 44.9 123.2 157.1 53.7 27.5 16.2 298.3 148.5 66.1 211.2 378.6 4 354.4 3 333.4 10 857.1 515.7 4 197.3 979.4 169.8 1 036.1 256.6 21 460.3

253.2 62.3 89.0 633.0 65.7 86.9 35.2 12.9 73.5 556.4 607.2 59.2 36.0 17.2 27.5 59.7 300.6 1 042.8 520.1 2.7 295.8 113.0 44.5 126.4 163.1 51.9 28.3 15.9 291.5 150.3 62.9 229.4 364.3 4 326.6 3 267.8 10 804.9 531.8 4 704.9 1 074.5 183.3 1 053.0 259.6 22 158.7

250.0 68.7 81.8 633.1 69.8 86.8 30.7 12.0 70.4 560.9 623.7 60.8 34.6 17.5 27.4 63.0 297.3 1 026.2 530.9 2.8 293.9 102.5 44.3 146.6 161.7 45.6 28.3 15.5 293.9 166.4 68.2 239.5 360.4 4 270.8 3 265.8 10 786.0 552.7 4 984.7 1 123.0 193.1 1 069.3 254.9 22 656.6

249.0 64.5 82.1 651.8 73.1 86.2 34.7 13.3 71.3 567.4 627.4 57.1 30.3 18.1 25.8 59.9 287.9 1 038.5 537.9 1.8 297.1 100.9 43.3 133.7 164.0 50.5 28.5 15.8 279.3 153.0 68.8 240.2 356.3 4 286.9 3 229.9 10 796.2 570.3 5 436.6 1 193.5 215.6 1 057.6 253.2 23 321.6

248.2 61.6 71.3 639.4 76.7 85.1 31.9 12.4 68.0 557.2 608.8 47.6 29.3 18.1 26.0 57.1 276.2 1 020.0 541.3 1.9 300.4 102.5 43.5 141.6 158.5 52.0 26.5 17.2 273.9 154.1 69.8 250.4 332.2 4 310.9 .. 10 711.6 .. .. .. .. .. .. ..

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World electricity generation by source of energy Terawatt hours (TWh) Coal and peat Oil

Natural gas Biofuels and waste

Hydro Other

Nuclear

25 000

20 000

15 000

10 000

5 000

0

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NUCLEAR ENERGY Nuclear energy expanded rapidly in the 1970s and 1980s, but in the last 20 years only small numbers of new nuclear power plants have entered operation. The role of nuclear energy in reducing greenhouse gas emissions and in increasing energy diversification and security of supply has been increasingly recognised over the last few years, leading to renewed interest in building new nuclear plants in several countries. However, the accident at the Fukushima Daiichi nuclear power plant in Japan following a major earthquake and tsunami in March 2011 has led some countries to review their nuclear programmes. Belgium, Germany and Switzerland decided to hasten the phase out of nuclear power while others conducted safety checks of nuclear facilities causing a delay in nuclear development programmes. With successful completion of these safety reviews no other countries decided to exit nuclear power, development plans were resumed and, as a result, global nuclear capacity is expected to increase over the next few years. Much of the future growth in nuclear capacity is expected to be in non-OECD economies. China in particular has begun a rapid expansion of nuclear capacity, with a total of 26 units under construction as of end 2014. India and Russia also have several new plants under construction. Among OECD countries, Finland, France, Japan, Korea, the Slovak Republic and the United States all presently have

one or more nuclear plants under construction, while Turkey is finalising plans for the construction of its first two nuclear power plants (a total of four reactors each) and Poland is actively planning its first nuclear units. However, there remains uncertainty on the role of nuclear power in Japan where all 48 operational reactors were offline throughout 2014.

Definition Nuclear electricity generation in terawatt hours (TWh) and the percentage share of nuclear in total electricity generation. Information on the number of nuclear power plants in operation and under construction as of December 2014.

Comparability Some generation data are provisional and may be subject to revision. Generation data for Japan are for the fiscal year.

Overview In 2014, nuclear energy provided 19.3% of total electricity supply in the OECD (and 11.1% of the world’s electricity). However, the use of nuclear energy varies widely. In all, 18 of the 34 OECD countries currently use nuclear energy, with eight generating one-third or more of their total electricity from this source in 2014. Collectively, OECD countries produce about 80% of the world’s nuclear energy. The remainder is produced in 12 non-OECD economies. Analysis indicates that, as part of a scenario to limit global temperature rise to two degrees, nuclear generating capacity should rise from about 370 GW at present to around 1 100 GW by 2050, supplying almost 20% of global electricity. This would be a major contribution to cutting the emissions of greenhouse gases from the electricity supply sector. However, uncertainties remain concerning the successful construction and operation of the next generation of nuclear plants, public and political acceptance of nuclear energy in the wake of the Fukushima Daiichi accident, and the extent to which other low-carbon energy sources are successfully developed. Presently the current level of development of nuclear energy is lagging behind these projections, with recent annual capacity additions only a third of what is required to meet the two degree scenario objectives by 2025.

Sources • Nuclear Energy Agency (NEA) (2015), Nuclear Energy Data, OECD Publishing. • Data for non-OECD countries provided by the International Atomic Energy Agency (IAEA).

Further information Analytical publications • International Energy Agency (IEA) (2015), Energy Technology Perspectives, IEA, Paris. • IEA (2015), Technology Roadmap: Nuclear Energy, IEA, Paris. • NEA, International Atomic Energy Agency (2014), Uranium 2014: Resources, Production and Demand, OECD Publishing. • International Energy Agency (IEA) (2013), Tracking Clean Energy Progress 2013, IEA, Paris. • NEA (2015), Nuclear Development (series), OECD Publishing.

Websites • Nuclear Energy Agency, www.oecd-nea.org.

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Nuclear electricity generation and nuclear plants 2014 Terawatt hours Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

32.0 100.9 28.6 22.2 415.9 91.7 14.7 0.0 150.4 9.3 3.5 14.5 6.1 54.8 62.2 26.4 57.8 797.0 833.6 1 888.0 14.5 123.8 33.2 169.1 14.8 2 410.4

Number as of 31 December 2014 As a percentage of total electricity generation

Plants connected to the grid

50.0 16.0 33.3 33.9 76.9 15.8 49.0 0.0 30.1 4.4 3.5 57.5 37.4 20.4 41.2 37.9 16.6 20.2 26.9 19.3 2.9 2.4 3.5 18.6 6.2 11.1

7 19 6 4 58 9 4 48 23 2 1 4 1 8 10 5 16 99 131 324 2 23 21 34 2 438

Plants under construction 1 1 4 5 2 5 4 18 1 26 6 9 70

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Nuclear electricity generation As a percentage of total electricity generation, 2014 90 80 70 60 50 40 30 20 10 0

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RENEWABLE ENERGY More and more governments are recognising the importance of promoting sustainable development and combating climate change when setting out their energy policies. Higher energy use has contributed to higher greenhouse gas emissions and higher concentration of these gases in the atmosphere. One way to reduce greenhouse gas emissions, while diversifying the energy portfolio, is to replace energy from fossil fuels by energy from renewables.

Comparability Biofuels and waste data are often based on small sample surveys or other incomplete information. Thus, the data give only a broad impression of developments and are not strictly comparable between countries. In some cases, complete categories of vegetal fuel are omitted due to lack of information.

Definition Data refer to the contribution of renewables to total primary energy supply (TPES) in OECD countries and the emerging economies (Brazil, China, India, Indonesia, South Africa and Russia). Renewables include the primary energy equivalent of hydro (excluding pumped storage), geothermal, solar, wind, tide and wave. It also includes energy derived from solid biofuels, biogasoline, biodiesels, other liquid biofuels, biogases, and the renewable fraction of municipal waste. Biofuels are defined as fuels derived directly or indirectly from biomass (material obtained from living or recently living organisms). Included here are wood, vegetal waste (including wood waste and crops used for energy production), ethanol, animal materials/wastes and sulphite lyes. Municipal waste comprises wastes produced by the residential, commercial and public service sectors that are collected by local authorities for disposal in a central location for the production of heat and/or power. Both renewable and non-renewable shares of waste are included under "Biofuels and waste".

Overview In OECD countries, total renewables supply grew on average by 2.7% per year between 1971 and 2014 as compared to 1.0% per year for total primary energy supply. Annual growth for hydro (1.1%) was lower than for other renewables such as geothermal (4.9%) and biofuels and waste (2.9%). Due to a very low base in 1971, solar and wind experienced the most rapid g row t h i n O E C D c o u n t r i e s , e s p e c i a l ly w h e re government policies have stimulated expansion of these energy sources. For the OECD as a whole, the contribution of renewables to energy supply increased from 4.8% in 1971 to 9.2% in 2014. The contribution of renewables varied greatly by country. On the high end, renewables represented 89.3% of energy supply in Iceland and 43.5% in Norway. On the low end, renewables contributed less than 5% to the energy supply for Japan, Korea, Luxembourg and the Netherlands. In 2013 renewables contributed 40% to the energy supply of Brazil, 34% in Indonesia, 26% in India, 11% in China, 11% in South Africa and 3% in Russia.

Sources • International Energy Agency (IEA) (2015), Energy Balances of OECD Countries, IEA, Paris. • IEA (2015), Energy Balances of Non-OECD Countries, IEA, Paris.

Further information Analytical publications • IEA (2015), Energy Policies of IEA Countries (series), IEA, Paris. • IEA (2015), Energy Technology Perspectives, IEA, Paris. • IEA (2015), Medium-Term Renewable Energy Market Report, IEA, Paris. • IEA (2015), World Energy Outlook, IEA, Paris. • IEA (2012), Solar Heating and Cooling, IEA Technology Roadmaps, IEA, Paris. • IEA (2011), Deploying Renewables, Best and Future Policy Practice, IEA, Paris. • IEA (2011), Harnessing Variable Renewables: A Guide to the Balancing Challenge, IEA, Paris. • IEA (2009), Cities, Towns and Renewable Energy: Yes In My Front Yard, IEA, Paris. • Nuclear Energy Agency (NEA) (2012), Nuclear Energy and Renewables , NEA, Paris. • OECD (2012), OECD Green Growth Studies: Linking Renewable Energy to Rural Development, OECD Publishing.

Statistical publications • IEA (2015), Renewables Information, IEA, Paris.

Online databases • IEA World Energy Statistics and Balances.

Websites • International Energy Agency, www.iea.org.

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Contribution of renewables to energy supply As a percentage of total primary energy supply Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1970

1990

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

8.47 13.59 0.05 15.29 .. .. 1.63 .. 27.89 9.31 1.34 8.82 2.79 45.65 1.15 .. 5.61 2.53 .. 0.20 .. .. 30.01 37.53 1.30 21.61 .. .. 6.32 17.20 18.35 34.35 0.19 3.68 .. .. .. .. .. .. .. .. ..

5.87 20.29 1.00 16.11 27.84 1.85 5.94 1.92 19.34 6.80 1.51 5.15 2.59 71.36 1.69 3.15 4.42 3.45 1.08 0.54 12.24 1.12 32.91 54.09 1.53 19.53 1.54 9.12 6.88 24.43 14.91 18.32 0.50 5.02 4.34 5.93 46.74 24.27 45.54 46.55 3.01 11.54 12.74

5.79 19.74 1.64 15.58 24.22 3.82 13.72 11.29 23.34 5.83 4.30 5.28 3.64 75.88 1.95 3.83 6.60 3.27 0.46 1.17 10.26 2.15 31.40 39.91 4.75 14.71 3.98 11.52 6.34 25.00 16.46 13.36 1.48 4.39 6.27 5.98 42.28 14.44 33.38 35.69 2.92 10.52 12.36

5.69 21.00 1.97 16.95 25.10 3.97 15.02 11.29 23.58 5.86 5.11 5.43 4.32 76.31 2.51 3.99 6.26 3.15 0.51 1.64 10.45 2.75 31.50 48.36 4.87 13.13 4.30 10.61 5.92 28.75 16.01 12.03 1.79 4.54 6.58 6.24 42.92 13.68 32.96 35.02 2.87 10.71 12.44

5.63 22.09 2.35 16.71 25.33 4.20 14.25 10.44 23.27 5.91 5.94 5.89 4.51 80.26 2.89 3.67 6.82 3.33 0.55 1.76 10.03 2.98 32.07 42.51 4.85 16.75 4.48 10.52 6.46 28.66 15.50 11.12 1.95 4.77 6.97 6.44 43.31 12.77 32.09 34.84 2.81 11.03 12.43

5.62 24.09 2.93 17.24 23.52 4.65 16.20 10.57 23.49 6.38 7.24 5.72 5.11 83.78 3.18 3.64 6.62 3.17 0.59 3.05 9.99 3.02 32.20 46.37 5.01 17.69 5.28 10.05 6.96 30.55 17.78 9.60 2.18 4.67 7.52 6.59 44.40 12.46 31.16 35.44 2.88 10.32 12.49

5.57 25.27 3.41 17.38 24.49 4.92 16.88 11.77 25.85 7.13 7.04 5.63 6.01 86.80 3.89 4.71 7.65 3.23 0.60 3.17 10.09 3.51 32.92 41.50 5.69 17.54 5.12 11.02 7.59 31.49 17.84 9.43 2.64 5.07 8.04 6.98 44.46 12.73 30.19 36.22 2.58 9.75 12.74

4.42 27.87 4.22 18.06 26.13 5.76 17.95 14.73 24.12 7.52 7.88 6.35 7.38 87.82 4.64 4.97 9.61 3.34 0.66 3.16 9.52 4.03 35.65 38.84 6.66 19.65 6.75 14.26 9.83 34.84 17.82 10.14 3.16 5.44 9.10 7.45 45.80 12.20 27.92 34.84 2.83 10.11 13.12

4.71 27.30 4.59 17.63 22.13 6.26 20.12 15.05 25.54 8.11 8.43 7.74 7.61 88.47 4.60 4.99 10.67 3.83 0.72 3.04 9.91 3.75 38.67 34.41 7.25 23.24 7.42 14.42 11.78 33.39 19.00 11.04 3.36 5.60 9.82 7.75 43.94 11.59 27.36 33.30 2.57 10.46 13.01

4.92 26.58 5.37 18.24 23.13 6.99 22.23 14.85 25.96 7.27 9.43 8.03 7.56 89.75 5.88 4.96 11.96 4.18 0.74 3.00 9.40 4.28 40.03 42.86 7.87 22.49 7.45 13.49 11.80 33.20 18.08 10.00 4.09 6.09 10.19 8.17 42.74 10.39 27.33 34.56 2.45 10.55 12.99

5.63 30.53 6.16 18.11 29.96 7.53 24.39 15.60 29.38 8.36 10.34 9.25 7.57 89.67 6.05 4.79 14.80 4.14 0.86 3.37 8.82 4.36 37.45 46.62 8.83 20.65 8.16 14.73 12.86 36.93 20.69 10.40 4.33 6.03 11.35 8.60 40.72 10.67 26.41 33.56 2.41 10.84 13.23

6.03 30.08 6.19 18.87 31.29 8.52 25.09 13.97 29.99 9.21 10.50 11.21 8.27 89.60 6.51 4.90 16.97 4.45 1.01 3.94 7.94 4.28 38.76 38.48 8.77 24.43 8.19 16.47 14.91 34.67 20.27 12.07 5.30 6.45 12.10 9.02 39.49 10.81 26.31 33.95 2.61 10.96 13.51

6.60 30.84 6.63 18.34 32.39 8.52 27.77 14.53 29.65 8.64 11.13 10.86 8.48 89.34 7.43 5.12 17.78 4.86 1.06 4.36 9.07 4.60 39.14 43.45 9.41 24.63 8.89 18.59 14.80 34.38 21.22 9.32 6.42 6.51 .. 9.17 .. .. .. .. .. .. ..

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OECD renewable energy supply Thousand tonnes of oil equivalent (ktoe) Hydro

Geothermal

Solar/wind/other

Biofuels and waste

600 000

500 000

400 000

300 000

200 000

100 000

0

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ENERGY AND TRANSPORTATION • ENERGY REQUIREMENTS

OIL PRODUCTION The Middle East and North Africa are exceptionally wellendowed with energy resources, holding about 67% of the world’s proven conventional oil reserves at the end of 2014. Current oil production is relatively low in comparison to these reserves and further development of them will be critical to meeting global energy needs in the coming decades. Unconventional oil (e.g. oil shale and sands, liquid supplies based on coal and biomass, and liquids arising for the chemical processing of natural gas) is also expected to play an increasing role in meeting world demand.

hydrocarbons, for example synthetic crude oil from tar sands, shale oil, etc.

Comparability In general, data on oil production are of high quality. In some instances, information has been based on secondary sources or estimated by the International Energy Agency (IEA).

Definition Crude oil production refers to the quantities of oil extracted from the ground after the removal of inert matter or impurities. Crude oil is a mineral oil consisting of a mixture of hydrocarbons of natural origin, being yellow to black in colour, of variable density and viscosity. Refinery production refers to the output of secondary oil products from an oil refinery. Crude oil includes all primary oils – crude oil, natural gas liquids, and other

Overview World crude oil production has increased by 57% over the 43 years from 1971 to 2014. In 2014, production reached 3 858 million tonnes or about 76 million barrels per day. Growth was not constant over the period as production declined in the aftermath of two oil shocks in the early and late 1970s. In 2014, the Middle East region’s share of oil production was 31% of the world total. However, both the level of production and its share in the world total varied significantly over the period, from 39% of the world total in 1974 to 19% in 1985. Increased production in the 1980s and 1990s put the OECD on par with the Middle East during that period, but by 2014, the share of OECD oil production had fallen to 23%. In 2014, OECD crude oil production rose by 7% year-onyear, driven by strong growth in North America. In the rest of the world, most of the growth happened outside of OPEC countries (minus 0.1% for OPEC and 1% for rest of the world). The United States has overtaken Saudi Arabia and Russia as the world’s leading producer of crude oil. Canada also remained in the top-five with production levels close to the ones of China. In the rest of the OECD, production by all major oil producers except Norway declined from 2013 to 2014. With the increase in the production of United States and Canada, the five top oil-producing countries represented together nearly half (48%) of world production. OPEC member countries represented 40% of total oil production and OECD members 25%.

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Sources • International Energy Agency (IEA) (2015), Energy Balances of OECD Countries, IEA, Paris. • IEA (2015), Energy Balances of Non-OECD Countries, IEA, Paris. • IEA (2015), Oil Information, IEA, Paris.

Further information Analytical publications • • • • • •

IEA (2015), Energy Policies of IEA Countries, IEA, Paris. IEA (2015), Energy Technology Perspectives, IEA, Paris. IEA (2015), Medium-Term Gas Market Report, IEA, Paris. IEA (2015), Medium-Term Oil Market Report, IEA, Paris. IEA (2015), World Energy Outlook, IEA, Paris. OECD (2014), Chemicals Used in Oil Well Production, Series on Emission Scenario Documents, No. 31, OECD Publishing.

Online databases • IEA World Energy Statistics and Balances.

Websites • International Energy Agency, www.iea.org. • Oil Market Report, www.oilmarketreport.org. OECD FACTBOOK 2015-2016 © OECD 2016

ENERGY AND TRANSPORTATION • ENERGY REQUIREMENTS OIL PRODUCTION

Production of crude oil Thousand tonnes of oil equivalent (ktoe) Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1971

1990

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

14 826 2 628 72 408 1 766 35 2 499 7 724 1 990 5 830 1 254 852 25 654 1 748 287 396 163 127 3 529 237 549 436 .. 693 389 8 662 40 120 7 460 44 947 .. 2 552 306

29 026 1 208 94 147 1 166 218 6 113 3 471 4 709 837 2 273 13 4 468 696 152 756 4 069 1 966 83 659 175 77 3 1 168 3 3 613 95 248 432 545 134 586 923 627 33 393 138 306 35 323 74 589 526 252 3 240 983

28 534 1 077 149 294 390 579 19 783 83 1 527 4 437 122 1 591 2 5 616 699 437 198 747 2 973 1 169 146 590 917 219 260 2 224 99 633 339 085 145 818 1 005 989 78 800 175 942 39 150 54 476 458 466 1 621 3 995 826

25 673 980 146 228 355 588 19 018 89 1 357 4 603 92 1 418 2 6 260 750 534 193 675 2 338 1 084 135 281 892 261 169 2 231 88 467 322 545 133 715 954 889 86 943 181 427 37 679 53 445 468 708 853 4 046 002

23 216 998 153 665 348 440 17 294 90 1 225 4 563 87 1 359 7 6 103 742 571 187 341 2 083 1 061 125 850 813 226 142 2 134 80 010 317 808 122 181 928 175 92 405 184 855 39 345 50 207 478 130 811 4 070 191

25 912 997 157 146 592 429 15 579 24 1 196 4 536 74 1 214 4 6 308 808 581 176 984 2 857 2 086 121 770 733 259 145 2 109 79 872 317 454 120 159 919 670 94 187 186 423 39 533 47 632 490 038 175 4 045 004

23 855 995 155 262 602 343 14 414 14 1 336 4 247 57 1 245 6 5 719 767 536 166 861 2 434 2 933 116 694 788 232 129 2 134 74 612 312 911 112 293 889 125 97 335 190 561 39 002 49 222 488 530 150 4 079 918

24 510 1 056 153 349 721 306 13 252 59 1 173 3 851 73 1 207 6 4 962 748 692 156 254 2 029 2 771 110 526 697 203 107 2 373 70 898 335 501 105 326 887 324 104 057 189 619 39 404 48 215 493 641 430 3 994 336

23 906 1 026 161 138 611 269 12 486 43 1 125 3 315 105 1 090 4 5 620 695 698 154 961 1 684 2 745 99 371 744 210 125 1 2 478 64 368 346 692 97 300 885 509 109 591 203 157 43 139 48 442 506 541 494 4 076 661

23 092 972 170 764 641 341 11 237 38 1 088 3 454 89 968 20 5 608 698 707 153 327 1 701 2 382 96 340 676 223 102 2 342 53 223 360 705 84 694 890 739 112 833 203 034 43 694 46 147 514 864 494 4 119 083

23 043 933 183 664 532 319 10 250 46 988 3 373 86 1 030 12 5 629 620 718 152 190 1 786 2 121 87 327 700 189 145 2 310 46 275 407 368 76 417 931 655 112 660 207 644 43 334 44 486 521 251 252 4 195 257

20 093 886 195 251 539 258 8 918 42 1 012 3 374 64 880 12 5 748 549 605 150 058 1 936 1 855 82 051 983 227 375 2 370 42 206 475 946 71 664 996 238 110 145 210 101 43 036 42 181 524 196 214 4 215 637

18 582 925 212 268 418 260 8 350 42 921 3 136 58 818 12 5 982 516 609 144 799 2 053 2 068 84 179 971 250 311 2 436 41 334 534 593 70 086 1 065 891 122 207 211 855 42 701 40 338 531 095 214 4 300 002

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Production of crude oil by region Thousand tonnes of oil equivalent (ktoe) OECD total Asia excluding China

Middle East Non-OECD Americas

Non-OECD Europe and Eurasia Africa

China

5 000 000 4 500 000 4 000 000 3 500 000 3 000 000 2 500 000 2 000 000 1 500 000 1 000 000 500 000 0

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ENERGY AND TRANSPORTATION • ENERGY REQUIREMENTS

OIL PRICES The price of crude oil, from which oil products such as gasoline are derived, is influenced by a number of factors beyond the traditional movements of supply and demand, notably geopolitics. Some of the lowest cost reserves are located in sensitive areas of the world. In addition, technological advances can have a significant influence on crude oil prices, for example by making new oil fields profitable to exploit or by providing substitute energy sources such as biofuels. So far though, the transport sector, driving global oil demand, remains heavily dependent on oil products. Therefore, demand for oil and

Overview The 1973 Arab oil embargo had a major price impact with Arabian Light prices surging from USD 1.84/barrel in 1972 to USD 10.98 in 1974. The next spike came with the 1981 Iranian revolution, when prices rose to a high of nearly USD 40/barrel. Prices declined gradually after this crisis. They dropped considerably in 1986 when Saudi Arabia substantially increased its oil production. The first Gulf crisis in 1990 brought a new peak. In 1997, crude oil prices declined due to the impact of the Asian financial crisis. Prices increased again in 1999 with OPEC target reductions and tightening stocks. A dip occurred in 2001 and 2002, but the expectation of war in Iraq raised prices to over USD 30/barrel in the first quarter of 2003. Prices remained high in the latter part of 2003 and in 2004. Crude oil prices increased dramatically in late August 2005 after Hurricane Katrina hit the US coast of the Gulf of Mexico. Prices increased throughout 2006 and into 2007 as the demand for oil in emerging economies, especially China, put pressure on the supply/demand balance, averaging 24 per cent higher than in the previous year. Early in 2008, prices crossed the symbolic USD 100/ barrel threshold and by July reached just under USD 150/barrel, bringing the price of oil to a record high in nominal and real terms. From early 2009 prices plummeted to USD 40/barrel as the impact of high prices and the onset of the global financial crisis sharply curbed oil demand, though by year-end they had risen to between USD 70 and 80/barrel. Crude oil prices increased steadily throughout 2010 and 2011, and, with the post-recession demand rebound, tightening stocks and low spare capacity, reached a peak of USD 122/barrel in March 2012. These high prices led to a period of significant over supply. After fluctuating around the USD 105/barrel mark until August 2014, prices halved to USD 50/barrel in January 2015. Following a rebound to USD 60/barrel in June 2015, prices were at USD 40/barrel by the end of the year.

110

consequently oil prices are closely linked to economic cycles. There is not one price for crude oil but many. World crude oil prices are established, always in US dollars, in relation t o t h r e e m a r k e t tr a d e d b e n c h m a r k s ( W e s t T e x a s Intermediate [WTI], Brent [or North Sea], and Dubai), and are often seen quoted at premiums or discounts to these prices.

Definition Crude oil import prices come from the IEA’s Crude Oil Import Register. Information is collected from national agencies according to the type of crude, by geographic origin and by quality of crude. Average prices are obtained by dividing value by volume as recorded by customs administrations for each tariff position. Values are recorded at the time of import and include cost, insurance and freight (c.i.f.) but exclude import duties. The nominal crude oil spot price from 2003 onwards is for Dubai and from 1970 to 2002 for Arabian Light. These nominal spot prices are expressed in US dollars per barrel of oil. The real price was calculated using the deflator for GDP at market prices and rebased with reference year 1970 = 100.

Comparability Average crude oil import prices depend on the quality of the crude oil imported. High quality crude oils such as UK Forties, Norwegian Oseberg and Venezuelan Light can be significantly more expensive than lower quality crude oils such as Canadian Heavy and Venezuelan Extra Heavy. High quality crudes command a higher premium because, amongst other factors, they are easier, being less corrosive, to transport and process, and produce higher yields of quality oil products. For any given country, the mix of crude oils imported each month will directly influence the average monthly price.

Sources • International Energy Agency (IEA) (2015), Energy Prices and Taxes, IEA, Paris.

Further information Analytical publications • • • •

IEA (2015), Energy Policies of IEA Countries, IEA, Paris. IEA (2015), Medium-Term Gas Market Report, IEA, Paris. IEA (2015), Medium-Term Oil Market Report, IEA, Paris. IEA (2015), World Energy Outlook, IEA, Paris.

Online databases • IEA Energy Prices and Taxes Statistics.

Websites • International Energy Agency, www.iea.org. • Oil Market Report, www.oilmarketreport.org. OECD FACTBOOK 2015-2016 © OECD 2016

ENERGY AND TRANSPORTATION • ENERGY REQUIREMENTS OIL PRICES

Crude oil import prices US dollars per barrel, average unit value, c.i.f. Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

1980

1990

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

31.81 33.66 29.93 30.21 .. .. 33.56 .. .. .. 33.96 31.81 .. .. 31.15 .. 31.84 33.11 .. .. .. 32.80 32.77 33.17 .. 35.45 .. .. 32.25 32.22 34.68 .. 31.22 33.39 .. .. .. .. .. .. .. ..

24.21 24.58 21.11 24.15 .. .. 23.18 .. .. .. 23.17 22.42 .. .. 25.55 .. 23.23 22.64 .. .. .. 21.83 21.97 18.46 .. 22.75 .. .. 21.88 23.02 24.23 23.11 22.92 21.07 .. .. .. .. .. .. .. ..

40.93 38.21 35.35 38.13 .. 34.82 38.78 .. 36.09 37.61 36.65 34.53 .. .. 39.24 .. 36.60 36.59 36.15 .. .. 35.02 41.71 39.20 .. 37.89 .. .. 36.03 36.47 38.73 34.90 37.75 35.86 .. .. .. .. .. .. .. ..

56.71 53.15 50.06 52.37 .. 51.28 54.40 .. 51.12 52.74 52.30 50.33 .. .. 55.24 .. 51.33 51.57 50.19 .. .. 50.00 56.07 53.08 .. 51.94 .. .. 50.54 51.78 55.81 50.65 53.79 48.82 .. .. .. .. .. .. .. ..

66.71 64.44 61.06 64.33 .. 62.05 66.92 .. 63.37 63.69 63.29 60.97 .. .. 66.38 .. 62.50 64.03 62.82 .. .. 61.47 67.36 58.83 .. 62.77 .. .. 60.99 62.50 66.76 61.48 65.00 59.17 .. .. .. .. .. .. .. ..

77.13 71.86 70.35 70.04 .. 68.54 74.94 .. 70.48 72.22 71.60 69.93 .. .. 74.16 .. 70.20 70.09 70.01 .. .. 68.74 73.84 70.16 .. 70.23 69.97 .. 68.66 70.13 74.92 68.59 73.80 66.77 .. .. .. .. .. .. .. ..

107.83 103.05 96.01 101.41 .. 97.71 96.48 .. 94.79 97.63 96.70 93.60 .. .. 100.39 .. 96.67 100.98 98.11 .. .. 97.89 105.80 80.22 94.02 98.83 90.49 .. 94.86 95.09 101.03 98.07 99.34 94.97 .. .. .. .. .. .. .. ..

63.40 60.69 61.77 60.29 .. 60.77 62.87 .. 61.01 61.64 61.18 60.10 .. .. 62.61 .. 60.69 61.29 61.12 .. .. 60.54 65.85 69.08 60.83 62.49 59.37 .. 59.78 60.58 63.27 61.27 62.39 58.83 .. .. .. .. .. .. .. ..

82.60 80.00 79.65 79.14 .. 79.04 80.40 .. 79.10 79.78 78.49 78.97 .. .. 80.95 .. 79.29 79.43 78.72 .. .. 78.55 80.62 81.06 77.89 79.13 78.72 .. 77.84 79.00 80.92 78.26 80.60 76.02 .. .. .. .. .. .. .. ..

115.66 110.92 110.50 110.80 .. 110.42 112.77 .. 109.23 111.78 110.63 109.41 .. .. 113.92 .. 110.23 109.30 108.63 .. .. 109.19 112.38 111.18 109.58 112.33 108.90 .. 108.50 110.67 112.51 109.81 113.49 102.43 .. .. .. .. .. .. .. ..

117.78 112.50 110.83 110.61 .. 112.33 107.90 .. 110.47 112.01 112.21 111.92 .. .. 115.64 .. 112.18 114.75 113.24 .. .. 111.54 117.70 108.23 109.97 112.21 109.83 .. 109.48 112.36 111.30 111.70 112.62 101.16 .. .. .. .. .. .. .. ..

114.19 110.63 108.45 108.60 .. 110.26 107.25 .. 107.57 109.56 109.62 107.61 .. .. 110.46 .. 109.98 110.61 108.59 .. .. 108.55 113.43 109.07 107.71 109.74 107.29 .. 106.77 109.10 110.35 108.37 110.27 97.25 .. .. .. .. .. .. .. ..

107.05 103.81 98.49 98.60 .. 102.13 100.19 .. 97.53 99.40 99.76 95.55 .. .. 99.87 .. 99.09 104.16 101.24 .. .. 99.22 105.96 101.61 96.28 100.22 95.63 .. 97.07 97.75 101.91 99.71 100.07 89.43 .. .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336456

Crude oil spot prices US dollars per barrel Nominal price based on Dubai spot

120 Post-recession demand rebound, tightening stocks, low spare capacity Tight spare capacity, crude outages in Nigeria, Iraq, North Sea

100

80

Supply runs ahead of demand

Hurricanes Katrina and Rita hit the US Gulf Coast Demand growth in China takes off

60 Second Gulf crisis

Iran - Iraq war

40

Iranian revolution Arab oil embargo

End of administrative pricing

Invasion of Kuwait

OPEC target reductions,

Global financial crisis

Libyan conflict

OPEC quota increases, Asian financial crisis

20

0

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ENERGY AND TRANSPORTATION • TRANSPORT

GOODS TRANSPORT Transport

There is an increasing demand for data on the transport sector to assess its various impacts on the economy, the environment and societies. However comparability of transport data between countries is not always possible worldwide due to the lack of harmonised definitions and methods. The Glossary for Transport Statistics (4th edition) provides common definitions to all member states of the European Union, the International Transport Forum and the United Nations Economic Commission for Europe.

Definition Goods transport data refer to the total movement of goods using inland transport modes (rail, road, inland waterways and pipelines) on a given network. Data are expressed in tonne-kilometres which represents the transport of one tonne over one kilometre. The distance to be taken into consideration is the distance actually run.

Transport is classified as national if both loading and unloading take place in the same country. If one of them occurs in another country then the transport is considered as international. The statistics on international road transport, based on the nationality concept are different for statistics for other modes that are based on the territoriality concept. Statistics based on the territoriality concept reflect the goods and the vehicles entering or leaving a country irrespective of the nationality of the transporting vehicle. Statistics based on the nationality concept only reflect the vehicles registered in the reporting country. Although there are clear definitions for all the terms used in transport statistics, countries might have different methodologies to calculate tonne-kilometre. Methods could be based on traffic or mobility surveys, use very different sampling methods and estimating techniques which could affect the comparability of their statistics.

Comparability

The aggregate “EU28” does not include Cyprus, and for OECD neither Chile nor Israel are included.

The International Transport Forum collects, on an annual basis from all its member countries, data on transport statistics. Data are collected from Transport Ministries, national statistics offices and other institution designated as official data sources.

In case of missing data for a country, the ITF can calculate estimates based generally on the growth rates of the relevant region to calculate aggregated trends.

Overview If global freight volumes transported by sea and air rebounded strongly, following the 2008 economic crisis and the collapse of world trade for rail and road freight the recovery has been slower, reflecting domestic economic performance more than trade. After having been hit severely by the economic crisis, OECD rail freight transport volumes continued to recover and remain above their pre-crisis levels. If OECD rail freight volumes increased by 1.1% in 2014 when compared to the previous year, in the European Union, rail freight volume stagnated (0.3%) during the same period to a level slightly over 405 billion tonkilometres. This is still 8% below their level in 2008. In Russia, rail freight volumes continued to increase in 2014 (4.7%) with more than 2.3 billion ton-kilometres, a level that is 8.7 % above pre-crisis volumes. Road freight transport suffered in 2009 and recovery in road freight has been slow. Road transport data for 2014 show an overall stagnation when compared to 2013 levels however volumes remain above their 2008 levels (3.4% for the OECD). The increase in activity, expressed in ton-kilometres, was 0.3 % for both the OECD and the EU in 2014 when compared with the previous year. However road freight activity in the emerging economies continued to increase throughout the 200814 period.

112

Sources • International Transport Forum (ITF) (2015), Goods transport (Database).

Further information Analytical publications • ITF (2015), ITF Transport Outlook 2015, ITF, Paris. • OECD (2012), Strategic Transport Infrastructure Needs to 2030, OECD Publishing. • OECD, ITF (2010), Improving Reliability on Surface Transport Networks, OECD Publishing.

Statistical publications • ITF (2015), Key Transport Statistics, ITF, Paris. • ITF (2013), Spending on transport infrastructure 1995-2011, ITF, Paris. • ITF (2012), Trends in the Transport Sector, ITF, Paris.

Methodological publications • ITF, Statistical Office of the European Communities and United Nations Economic Commission (2010), Illustrated Glossary for Transport Statistics 4th Edition, OECD Publishing.

Websites • International Transport Forum, www.internationaltransportforum.org. OECD FACTBOOK 2015-2016 © OECD 2016

ENERGY AND TRANSPORTATION • TRANSPORT GOODS TRANSPORT

Inland goods transport Billion tonne-kilometres Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

294.2 45.8 70.5 403.0 .. 63.2 18.1 14.1 37.8 266.5 440.9 15.0 31.5 0.7 14.9 .. 193.9 334.2 102.8 10.4 244.5 81.3 20.5 19.0 150.1 32.3 25.9 5.0 204.6 51.0 25.5 205.8 183.9 7 250.9 2 082.6 10 857.4 .. 2 890.2 .. .. 2 657.9 ..

311.1 45.0 67.7 434.8 .. 64.8 18.2 16.1 41.1 265.0 444.3 15.2 33.0 0.7 16.3 .. 176.4 344.7 109.4 10.5 249.3 83.9 21.1 20.4 160.3 29.5 27.5 5.3 212.3 51.6 25.8 179.0 186.4 7 297.5 2 108.0 10 964.0 .. 3 149.6 .. .. 2 925.4 ..

326.5 45.7 65.6 497.5 .. 63.4 17.9 17.3 42.5 270.3 470.1 16.1 36.7 0.7 17.7 .. 192.3 350.1 111.7 10.9 254.2 89.8 23.1 22.7 188.5 43.7 28.9 5.4 241.1 53.5 27.1 178.2 194.3 7 373.6 2 266.4 11 277.1 .. 3 711.8 .. .. 3 192.4 ..

348.0 44.5 62.1 507.9 .. 61.4 18.2 16.5 41.6 261.5 486.4 16.5 41.9 0.7 18.5 .. 205.3 357.8 111.0 9.6 276.4 88.9 23.2 23.7 196.2 45.6 32.7 5.6 254.1 56.4 27.6 181.7 199.2 7 475.7 2 342.1 11 496.3 .. 4 162.8 1 176.1 .. 3 295.2 ..

359.1 49.9 62.1 520.9 .. 69.2 18.3 16.0 40.9 270.2 516.8 17.2 48.4 0.8 17.9 .. 189.9 369.7 119.6 9.7 283.1 89.1 23.2 23.9 216.7 48.0 33.0 5.7 262.6 57.7 29.0 192.9 200.0 7 556.7 2 424.6 11 718.0 .. 4 616.8 1 335.5 .. 3 390.1 ..

376.4 49.8 60.7 523.5 .. 67.4 18.2 14.9 40.4 278.3 538.6 18.2 53.9 0.8 19.3 .. 187.2 378.1 116.1 9.9 299.6 90.7 23.8 24.1 238.6 49.5 37.7 6.2 278.9 59.6 29.1 204.1 204.7 7 584.5 2 516.7 11 882.9 .. 5 261.7 1 471.5 .. 3 523.1 ..

404.6 50.0 57.0 513.0 .. 69.5 16.8 13.0 41.9 264.4 536.9 17.7 53.5 0.8 17.4 .. 198.7 368.7 113.0 10.2 301.9 91.7 25.5 25.2 248.8 41.9 39.5 6.2 262.4 60.9 29.6 229.1 193.0 7 882.9 2 482.4 12 185.6 .. 7 733.0 1 581.6 .. 3 509.1 ..

418.7 43.4 50.7 479.4 .. 60.5 15.6 11.2 36.6 225.1 474.9 17.5 50.1 0.8 12.1 .. 184.7 355.2 108.4 8.9 280.8 80.5 21.6 23.6 259.0 37.9 35.3 4.9 227.5 52.5 27.6 231.9 170.3 7 122.5 2 213.8 11 129.7 .. 8 248.3 1 739.6 .. 3 220.9 ..

444.0 45.7 50.9 523.8 .. 68.5 16.4 12.2 40.2 230.0 499.0 20.7 50.5 0.8 11.0 .. 191.7 266.6 112.3 9.3 299.1 94.3 24.0 24.3 288.2 37.3 36.7 5.7 226.1 56.2 28.2 241.5 182.8 7 441.4 2 329.5 11 579.4 .. 9 566.0 1 881.1 .. 3 387.6 ..

479.6 46.7 50.5 561.1 .. 71.8 17.9 12.2 36.4 237.3 507.8 20.8 51.1 0.8 10.0 .. 165.0 254.0 114.5 9.4 306.6 95.0 24.7 23.8 297.0 40.2 37.9 5.9 223.5 56.3 29.1 259.4 185.5 7 730.3 2 344.7 11 962.0 .. 10 979.5 2 018.6 .. 3 529.9 ..

517.5 45.0 .. 591.0 .. 68.1 17.6 10.9 34.9 221.3 491.9 20.7 50.7 0.8 10.0 .. 148.5 230.4 118.6 7.2 312.8 93.1 25.5 24.3 305.4 32.5 38.1 5.3 215.6 59.3 28.3 265.2 .. .. 2 286.2 12 287.6 .. 12 022.8 2 092.7 .. 3 739.6 ..

551.6 45.6 .. 604.5 .. 71.5 17.4 10.7 34.0 216.8 496.6 19.4 53.2 0.8 9.2 .. 149.3 235.2 129.0 7.7 313.1 91.6 25.9 25.8 331.5 39.2 39.5 5.7 208.7 59.6 29.2 261.9 .. .. .. .. .. 16 815.1 .. .. 3 750.3 ..

588.4 47.5 .. .. .. 71.4 17.8 9.6 33.1 210.6 .. 19.6 55.3 0.8 9.9 .. .. .. .. .. .. 91.7 .. 26.4 335.8 .. 41.0 6.2 212.3 60.1 .. 261.8 .. .. .. .. .. .. .. .. 3 840.1 ..

1 2 http://dx.doi.org/10.1787/888933336731

Inland goods transport Average annual growth rate in percentage, 2004-14 or latest available period 12

18

10 8 6 4 2 0 -2 -4 -6 -8

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ENERGY AND TRANSPORTATION • TRANSPORT

PASSENGER TRANSPORT Although some studies have suggested a saturation of passenger travel by car in some developed countries, the demand for passenger mobility continues to increase worldwide. There is a need for good and comprehensive data on passenger mobility in order to develop sustainable passenger mobility systems. Comparability of transport data between countries is not always possible worldwide due to the lack of harmonised definitions and methods. The Glossary for Transport Statistics (4th edition) provides common definitions to all member states of the European Union, the International Transport Forum and the United Nations Economic Commission for Europe.

Definition Passenger transport data refer to the total movement passengers using rail or road (passenger cars, buses coaches) transport modes. Data are expressed passenger-kilometres which represents the transport

Overview The economic crisis had a relatively small impact on rail passenger transport. If rail passenger-kilometres fell in 2009 in the OECD and the EU, volumes have recovered since then and in 2014 they are above precrisis levels by 3.9% and 6.3% respectively. However there are marked differences between countries. Indeed, some European countries showed a decrease in their rail passenger traffic in 2014, notably in the Netherlands (minus 8.4%), Slovenia (minus 8.3%) and Poland (minus 4.7%). A few countries resisted the otherwise downward trend; Ireland (8.0%), Portugal (5.6%), the United Kingdom (4.4%) and the Czech Republic (2.6%). Outside Europe, rail passengerkilometres for Russia dropped by 6.1% in 2014 when compared to the previous year. Rail passengerkilometres continues to show strong growth in China (8.0%) and India (6.9%) which account for nearly 70% of the estimated global rail passenger transport. However, there continue to be marked differences in the EU. In France and Germany, passenger-kilometres have remained consistently above their pre-crisis levels. Passenger transport by rail in the United Kingdom has experienced continuous growth in volumes whereas passenger traffic in Italy, which had deteriorated since the economic crisis, shows an increase in trend since 2013, but still remains below pre-crisis levels. Data on passenger-kilometres travelled in passenger cars are less detailed and less up to date in many countries. Within the EU, the decline was on average 0.5% in the 15 countries where data are available for 2014. In the United States, passenger travel by car fell 0.6% in 2013 when compared to 2012.

114

of or in of

one passenger over one kilometre. The distance to be taken into consideration is the distance actually run.

Comparability Although there are clear definitions for all the terms used in transport statistics, countries might have different methodologies to calculate passenger-kilometres. Methods could be based on traffic or mobility surveys, use very different sampling methods and estimating techniques which could affect the comparability of their statistics. If passenger transport by rail or by regular buses and coaches can be estimated fairly easily, passengers transport by passenger car or by un-schedule coaches are much more difficult to track down. Some countries do not report passenger car transport at all, others carry out different types of surveys to estimate passenger travel on their territory. There is no common methodology for this and since no method provides a complete vision of passenger movements, data are not always comparable between countries. The aggregate “EU28” does not include Cyprus, and for OECD neither Chile nor Israel are included. In case of missing data for a country, estimates are based generally on the growth rates of the relevant region. These estimates are used solely to calculate aggregated trends in graphic representations and are not shown at the individual country level.

Sources • International Transport Forum (ITF) (2015), “Passenger transport” (Database).

Further information Analytical publications • ITF (2015), ITF Transport Outlook 2015, ITF, Paris. • OECD (2014), OECD Tourism Trends and Policies, OECD Publishing. • OECD (2012), Strategic Transport Infrastructure Needs to 2030, OECD Publishing. • OECD and ITF (2010), Improving Reliability on Surface Transport Networks, OECD Publishing.

Statistical publications • ITF (2012), Trends in the Transport Sector, ITF, Paris.

Methodological publications • ITF, Statistical Office of the European Communities and United Nations Economic Commission (2010), Illustrated Glossary for Transport Statistics 4th Edition, OECD Publishing.

Websites • International Transport Forum, www.internationaltransportforum.org. OECD FACTBOOK 2015-2016 © OECD 2016

ENERGY AND TRANSPORTATION • TRANSPORT PASSENGER TRANSPORT

Inland passenger transport Billion passenger-kilometres Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

272.4 8.3 132.2 494.6 .. 81.6 69.2 2.8 69.3 912.2 1 001.9 43.6 75.2 4.6 .. .. 854.6 1 337.7 296.9 .. 393.3 175.1 .. 60.6 208.6 99.5 35.9 25.4 383.8 123.9 96.2 168.5 752.7 5 640.7 5 018.3 13 721.7 .. 1 277.5 3 330.0 .. 323.3 ..

279.0 8.2 133.0 486.4 .. 83.3 69.9 2.8 70.6 917.7 996.5 43.6 76.4 4.7 .. .. 854.5 1 339.2 289.8 .. 399.1 176.2 .. 60.9 212.6 100.1 35.3 25.6 392.3 124.7 97.3 170.2 753.5 5 680.6 5 041.7 13 783.8 .. 1 248.4 3 611.2 .. 323.4 ..

291.0 8.3 135.5 489.8 .. 82.7 71.5 2.9 71.9 923.3 1 024.4 44.3 78.1 4.9 .. .. 865.1 1 333.0 242.9 .. 410.1 181.5 .. 61.7 216.6 101.4 34.4 26.0 404.0 125.1 98.5 179.5 755.5 5 765.9 5 121.1 13 928.4 .. 1 446.1 4 044.7 .. 332.7 ..

291.8 8.5 136.1 514.2 .. 83.9 71.7 3.2 72.9 919.2 1 016.2 44.3 76.5 5.1 .. .. 828.1 1 324.2 255.4 .. 423.0 179.6 .. 61.3 219.6 101.3 35.7 26.3 412.6 125.6 100.1 187.2 752.3 5 788.2 5 093.8 13 962.8 .. 1 535.4 4 867.6 .. 314.2 ..

287.8 9.3 137.6 511.6 .. 86.1 72.5 3.4 73.5 924.2 1 024.0 44.1 79.2 5.5 .. .. 829.5 1 313.6 260.4 .. 437.1 179.5 .. 62.3 223.8 101.1 35.9 26.9 412.4 125.9 101.4 192.9 758.2 5 695.1 5 132.3 13 913.7 .. 1 675.3 5 240.8 .. 313.5 ..

292.0 9.6 140.7 504.9 .. 88.0 74.2 3.2 75.1 938.6 1 026.9 44.5 79.2 5.7 .. .. 829.5 1 324.6 260.9 .. 450.0 182.2 .. 64.0 229.8 101.7 35.9 28.4 424.3 129.0 103.2 214.7 762.8 5 855.6 5 187.9 14 177.5 .. 1 872.3 5 630.0 .. 323.8 ..

294.9 10.8 139.1 494.0 .. 88.6 74.3 3.0 75.0 934.8 1 033.4 43.8 79.3 5.6 .. .. 828.3 1 310.5 364.3 .. 464.0 178.5 .. 65.2 240.5 101.0 35.3 28.9 427.4 128.4 104.7 211.2 759.9 5 663.2 5 195.4 14 086.9 .. 2 025.5 6 034.0 .. 327.8 ..

294.8 10.7 140.6 494.4 .. 88.3 73.6 2.6 75.7 937.3 1 041.9 43.6 78.6 5.6 .. .. 869.7 1 292.5 366.3 .. 437.3 172.7 .. 65.8 245.3 .. 34.0 29.8 430.6 128.7 107.4 217.8 755.8 5 007.5 5 242.2 13 453.6 .. 2 139.0 6 459.5 .. 292.8 ..

296.7 10.3 140.3 .. .. 81.0 73.2 2.5 76.2 946.2 1 046.8 43.5 76.5 5.6 .. .. 847.8 1 100.7 437.2 .. 452.9 166.7 .. 65.8 248.4 .. 34.3 29.6 415.0 128.3 109.4 232.4 742.0 5 009.6 5 194.1 13 326.0 .. 2 378.3 6 918.5 .. 279.4 ..

300.0 10.9 144.2 .. .. 81.5 73.5 2.5 76.9 952.5 1 057.8 43.1 76.3 5.4 .. .. 814.6 953.4 426.4 .. 466.5 173.1 .. 66.8 256.1 .. 34.7 29.6 412.6 129.9 111.0 248.1 740.3 5 057.1 5 179.7 13 239.7 .. 2 637.3 7 397.5 .. 278.1 ..

302.8 11.3 140.1 .. .. 80.5 74.1 2.7 76.8 955.4 1 061.1 43.1 76.5 5.5 .. .. 726.7 964.7 425.6 .. 481.7 173.4 .. 67.7 265.7 .. 34.7 29.6 398.1 130.6 112.8 263.5 742.1 5 127.7 5 099.3 13 272.7 .. 2 828.0 7 923.0 .. 277.7 ..

304.9 11.9 .. .. .. 81.3 74.6 2.8 76.7 964.2 1 066.1 .. 76.6 5.6 .. .. 771.7 .. 426.3 .. 485.8 .. .. 68.5 267.7 .. 34.8 .. 392.2 128.7 114.6 272.0 737.2 5 166.9 .. .. .. 2 184.7 8 434.0 .. 263.3 ..

306.7 12.1 .. .. .. 84.1 73.7 2.9 76.9 970.5 .. .. 77.9 5.9 .. .. .. .. .. .. .. .. .. 70.7 .. .. 35.1 .. 384.3 136.2 .. 280.5 .. .. .. .. .. .. 9 010.0 .. 257.3 ..

1 2 http://dx.doi.org/10.1787/888933336749

Inland passenger transport Average annual growth rate in percentage, 2004-14 or latest available period 10 8 6 4 2 0 -2 -4

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ENERGY AND TRANSPORTATION • TRANSPORT

ROAD FATALITIES The number of road motor vehicles is high amongst member countries of the International Transport Forum and reducing road accidents is a concern for all governments. Such concern becomes more challenging with increasing needs for more mobility.

Definition A road vehicle is a vehicle running on wheels and intended for use on roads, it includes bicycles and road motor vehicles. A road motor vehicle is a road vehicle fitted with an engine whence it derives its sole means of propulsion, and which is normally used for carrying persons or goods or for drawing, on the road, vehicles used for the carriage of persons or goods. They include buses, coaches, trolley buses, goods road vehicles and passenger road motor vehicles. Although tramways (street-cars) are rail borne vehicles they are integrated into the urban road network and considered as road motor vehicles.

It can be compared with other causes of death in a country (heart diseases, cancer, HIV, etc.), however when comparing countries road fatality risks, this indicator loses its relevance if countries do not have the same level of motorisation. Fatalities per vehicle-kilometre provides a better measure of fatality risk on road networks, even if it does not take into account non-motorised vehicles such as bicycles, but there is currently no harmonisation in the methodology to calculate distances travelled, and not all countries collect this indicator. The numbers of vehicles entering the existing stock is usually accurate, but information on the numbers of vehicles withdrawn from use is less certain. Therefore it can only be used to compare safety performance between countries with similar traffic and car use characteristics. In addition it does not take into account non-motorised vehicles such as bicycles.

Road fatality means any person killed immediately or dying within 30 days as a result of a road injury accident. Suicides involving the use of a road motor vehicle are excluded.

Comparability Road motor vehicles are attributed to the countries where they are registered while deaths are attributed to the countries in which they occur. Fatalities per million inhabitants express the mortality rate, or an overall risk of being killed in traffic for a citizen.

Sources

Overview The first ten years of the 21st century saw record road s a f e t y p e r f o r m a n c e i n m o s t co u n t r i e s o f t h e International Transport Forum (ITF). Following three consecutive years of record improvements in 2008, 2009 and 2010, the number of people killed in road accidents continued to fall in 2014 recording a drop of 1.2% in OECD countries (excluding Chile and Israel). However, in 2014 one third of ITF countries reported an increase in road fatalities when compared to 2013, Russia (10.9%), the United Kingdom (4.7%), France (3.5%) and Germany (1.1%) Countries used to good road safety performance might report an increase in road fatalities; this could be explained by the difficulty in improving further an already good level of safety performance. These overall positive developments should not hide the economic costs and human tragedies behind the data. While high-income countries look back on a record decade in reducing road fatalities, 90% of global road deaths occur in low and middle income countries and estimates put annual world road fatalities above 1.3 million, with 50 million serious injuries.

116

• International Transport Forum (ITF) (2015), “Road traffic Injury Accidents“ (Database). • ITF (2015), Quarterly Transport Statistics (Database).

Further information Analytical publications • ITF (2015), IRTAD Road Safety Annual Report, OECD Publishing. • ITF (2011), Reporting on Serious Road Traffic Casualties, ITF, Paris. • OECD, ITF (2013), Cycling, Health and Safety, OECD Publishing.

Statistical publications • ITF (2015), Key Transport Statistics, ITF, Paris. • ITF (2012), Trends in the Transport Sector, OECD Publishing.

Methodological publications • ITF, Statistical Office of the European Communities and United Nations Economic Commission (2010), Illustrated Glossary for Transport Statistics 4th Edition, OECD Publishing.

Websites • International Transport Forum, www.internationaltransportforum.org. OECD FACTBOOK 2015-2016 © OECD 2016

ENERGY AND TRANSPORTATION • TRANSPORT ROAD FATALITIES

Road fatalities Per million inhabitants Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

87 118 131 93 .. 140 86 162 80 124 83 149 141 101 96 .. 122 76 152 139 46 66 103 68 152 161 116 134 129 63 70 63 60 150 110 107 .. .. 79 .. 229 ..

81 115 117 88 .. 142 80 120 73 97 80 146 131 79 84 .. 115 70 151 117 43 67 114 61 148 148 122 121 128 59 74 60 61 148 104 103 .. .. 79 .. 246 ..

79 107 112 85 .. 136 68 125 72 89 71 151 128 79 92 .. 106 67 137 109 42 54 106 56 150 123 113 137 110 53 69 66 56 146 97 99 .. 83 83 .. 240 ..

80 93 104 90 .. 126 61 125 72 84 65 149 127 64 95 .. 100 63 132 101 43 50 98 48 143 119 112 129 88 49 55 67 55 147 92 96 .. 76 84 .. 237 ..

77 88 101 88 .. 104 56 151 64 74 62 149 129 102 85 .. 97 57 131 91 44 50 94 52 137 92 113 131 92 49 49 68 54 143 88 93 .. 68 92 .. 229 ..

77 83 100 84 .. 119 74 146 72 72 60 144 123 48 77 .. 88 52 127 96 48 48 100 49 146 92 123 145 85 51 51 72 50 137 86 90 .. 62 99 .. 233 ..

68 82 88 73 .. 104 74 99 65 66 55 139 99 38 62 .. 80 47 120 72 47 46 86 53 143 84 113 106 67 43 47 60 43 123 79 81 .. 55 102 .. 210 ..

69 76 87 66 .. 86 55 75 52 66 51 130 82 53 52 .. 72 46 119 96 42 44 89 44 120 70 71 84 59 39 45 61 38 110 70 74 .. 51 106 .. 194 ..

61 66 77 66 .. 77 46 59 51 61 45 113 74 25 46 .. 69 45 111 63 43 39 86 43 103 89 65 67 53 28 42 56 30 107 63 70 .. 49 112 .. 186 ..

57 62 78 59 .. 74 39 76 54 61 49 103 64 38 41 .. 65 43 105 64 37 40 65 34 110 84 60 69 44 34 40 52 31 104 61 68 .. 46 117 .. 196 ..

57 63 69 60 .. 71 30 66 47 56 45 89 61 28 35 .. 63 41 108 64 38 39 70 29 94 68 65 63 41 30 42 51 28 107 56 66 .. 44 112 .. 195 ..

51 54 65 55 .. 62 34 61 47 50 41 79 60 46 41 .. 56 40 101 83 .. 34 57 37 88 61 46 61 36 27 33 49 28 103 51 .. .. 43 110 .. 188 ..

49 50 .. .. .. 65 .. 59 41 51 42 72 63 12 42 .. 54 .. 94 .. .. 34 65 29 84 61 54 52 36 28 30 46 29 102 .. .. .. .. 110 .. 208 ..

1 2 http://dx.doi.org/10.1787/888933336538

Road fatalities 2014 or latest available year Per million inhabitants

Per million vehicles

250

200

150

100

50

0

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LABOUR EMPLOYMENT AND HOURS WORKED EMPLOYMENT RATES EMPLOYMENT RATES BY AGE GROUP PART-TIME EMPLOYMENT SELF-EMPLOYMENT EMPLOYMENT BY REGION HOURS WORKED

UNEMPLOYMENT UNEMPLOYMENT RATES LONG-TERM UNEMPLOYMENT UNEMPLOYMENT BY REGION

LABOUR • EMPLOYMENT AND HOURS WORKED

EMPLOYMENT RATES Employment and hours worked

Employment rates are a measure of the extent of utilisation of available labour resources. In the short term, these rates are sensitive to the economic cycle, but in the longer term they are significantly affected by government policies with regard to higher education and by policies that facilitate employment of women and disadvantaged groups.

Definition Employment rates are calculated as the ratio of the employed to the working age population. Employment is generally measured through household labour force surveys. According to the ILO Guidelines, employed persons are defined as those aged 15 or over who report that they have worked in gainful employment for at least one hour in the previous week or who had a job but were absent from work during the reference week. Those not in employment consist of persons who are classified as either unemployed or inactive, in the sense that they are not included in the labour force for reasons of experiencing difficulty to find a job, study, incapacity or the need to look after young children or elderly relatives or personal choice.

Comparability All OECD countries use the ILO Guidelines for measuring employment. Operational definitions used in national labour force surveys may vary slightly from country to country. Employment levels are also likely to be affected by changes in the survey design, the survey scope and the survey conduct. Despite these changes, employment rate are fairly consistent over time. There are series breaks due to a major redesign of the national labour force survey in Chile between 2009 and 2010, in Israel between 2011 and 2012 and in Turkey between 2013 and 2014. For Israel there was a change from a quarterly to a monthly survey as well as a change in concept from “civilian” to “total” labour force.

The working age population refers to persons aged 15 to 64.

Overview In 2014, the OECD employment rate was 65.7%, 0.6 percentage point higher than in 2013. Among OECD countries, employment rates ranged from a bit less than 50% in Greece and Turkey to more than 80% in Iceland. Employment rates for men are higher than those for women in all OECD countries with an average OECD difference of 15.7 percentage points in 2014. However, there are large cross country differences in the employment gaps, which range from less than 5 percentage points in Finland, Sweden, Norway and Iceland (which are also the only four countries where the employment rate for women is above 70%), to more than 20 percentage points in Korea, Chile, Mexico and Turkey (the country with the lowest women’s employment rate, at 29.5% in 2014). The employment gap has closed by 3.3 percentage points since 2005 in the OECD area due to an increase in women’s employment rates, while those of men declined since the onset of the crisis in late 2007 and in particular in countries hard hit by the crisis. However, compared to 2013, the gap was stable in 2014 Since 2005, the employment rate for women has increased in about three quarters of countries. By contrast, over the same period, almost two-thirds of c o u n t r i e s h av e r eg i s t e r e d d e c r e a s i n g m e n ’s employment rates.

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Sources • OECD (2015), OECD Employment Outlook, OECD Publishing.

Further information Analytical publications • Jaumotte, F. (2003), “Female Labour Force Participation”, OECD Economics Department Working Papers, No. 376. • OECD (2015), How’s Life? Measuring Well-being, OECD Publishing. • OECD (2015), OECD Skills Outlook, OECD Publishing. • OECD (2011), Divided We Stand, Why Inequality Keeps Rising, OECD Publishing.

Statistical publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED EMPLOYMENT RATES

Employment rates by gender Share of persons of working age in employment Women

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Men

Total

2000

2010

2013

2014

2000

2010

2013

2014

2000

2010

2013

2014

61.3 59.6 51.5 65.6 .. 56.9 71.6 57.4 64.2 .. .. 41.7 49.7 .. 53.9 50.9 39.6 56.8 50.0 .. .. 63.5 63.1 73.7 48.9 60.5 51.5 58.4 41.3 .. .. .. 64.7 67.8 .. .. .. .. .. .. 59.3 39.0

66.1 65.7 56.5 68.8 46.7 56.3 71.1 60.8 66.9 59.8 66.1 48.0 50.2 76.2 55.8 56.9 46.1 60.4 52.6 57.2 43.2 69.3 66.5 73.3 52.6 61.0 52.3 62.6 52.8 69.7 72.5 26.2 64.5 62.4 58.2 56.5 .. .. .. .. 63.3 35.3

66.4 66.9 57.2 69.7 51.0 59.6 70.1 65.7 67.8 60.4 69.0 39.9 52.6 79.0 55.9 63.0 46.5 62.5 53.9 59.1 45.0 69.0 67.7 73.5 53.4 57.9 53.3 59.2 50.3 72.5 74.4 29.7 65.8 62.3 58.8 57.4 .. .. .. .. 64.4 36.9

66.1 66.9 58.0 69.4 51.7 60.7 69.8 66.3 68.0 60.4 69.5 41.1 55.9 79.3 56.7 64.2 46.8 63.7 54.9 60.5 44.2 68.1 69.1 73.4 55.2 59.7 54.3 60.0 51.2 73.1 75.2 29.5 67.1 63.0 59.6 57.9 .. .. .. .. 64.8 36.9

76.9 77.4 69.5 76.2 .. 73.2 80.8 63.4 70.1 .. .. 71.5 63.1 .. 76.3 61.4 68.0 81.1 73.1 .. .. 82.1 77.8 81.3 61.2 76.6 62.2 67.2 71.2 .. .. .. 77.8 80.6 .. .. .. .. .. .. 67.6 53.2

78.6 76.0 67.5 74.1 72.1 73.5 75.6 61.7 69.4 68.4 76.0 70.4 59.9 80.1 63.5 63.4 67.5 80.7 73.9 73.1 77.8 80.0 78.2 77.3 65.3 69.7 65.2 69.7 64.8 74.6 84.6 66.7 74.4 71.1 70.1 72.6 .. .. .. .. 71.6 48.7

77.6 76.0 66.4 75.2 73.8 75.7 75.0 71.4 69.9 67.9 78.0 57.9 63.7 83.2 65.1 71.2 64.7 80.8 74.9 72.2 78.3 78.2 78.3 77.3 66.6 63.5 66.4 67.1 59.2 76.3 84.7 69.5 75.4 72.6 69.4 73.1 .. .. .. .. 73.6 48.7

77.1 75.3 65.8 75.2 72.8 77.0 75.8 73.0 69.5 67.3 78.1 58.0 67.8 84.0 66.9 71.5 64.7 81.6 75.7 72.6 78.1 78.2 79.7 77.0 68.2 65.8 67.7 67.6 60.7 76.6 84.5 69.5 76.8 73.5 70.1 73.6 .. .. .. .. 74.3 48.9

69.1 68.5 60.5 70.9 .. 65.0 76.3 60.3 67.2 .. .. 56.5 56.2 .. 65.2 56.1 53.7 69.0 61.5 .. .. 73.0 70.3 77.5 55.0 68.4 56.8 62.9 56.3 .. .. .. 71.2 74.1 .. .. .. .. .. .. 63.3 45.7

72.4 70.8 62.0 71.5 59.3 65.0 73.4 61.3 68.2 64.0 71.1 59.1 55.0 78.2 59.7 60.2 56.8 70.6 63.3 65.2 59.7 74.7 72.2 75.3 59.0 65.3 58.8 66.2 58.9 72.2 78.6 46.3 69.4 66.7 64.1 64.5 .. .. .. .. 67.3 41.8

72.0 71.4 61.8 72.4 62.3 67.7 72.6 68.5 68.9 64.1 73.5 48.8 58.1 81.1 60.5 67.1 55.5 71.7 64.4 65.7 60.8 73.6 72.8 75.4 60.0 60.6 59.9 63.3 54.8 74.4 79.6 49.5 70.5 67.4 64.1 65.1 .. .. .. .. 68.8 42.7

71.6 71.1 61.9 72.3 62.2 69.0 72.8 69.6 68.7 63.8 73.8 49.4 61.8 81.6 61.7 67.9 55.7 72.7 65.3 66.6 60.4 73.1 74.2 75.2 61.7 62.6 61.0 63.9 56.0 74.9 79.9 49.5 71.9 68.1 64.8 65.7 .. .. .. .. 69.3 42.8

1 2 http://dx.doi.org/10.1787/888933336088

Employment rates: total Share of persons of working age in employment 3 year average (2012-14)

3 year average (2002-04) or first period available

90 80 70 60 50 40 30 20 10 0

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LABOUR • EMPLOYMENT AND HOURS WORKED

EMPLOYMENT RATES BY AGE GROUP Labour markets differ in how employment opportunities are allocated among people of different ages. Employment rates for people of different ages are significantly affected by government policies with regard to higher education, pensions and retirement age.

Employment rates are shown for three age groups: persons aged 15 to 24 are those just entering the labour market following education; persons aged 25 to 54 are those in their prime working lives; persons aged 55 to 64 are those who are approaching retirement.

Definition

Comparability

The employment rate for a given age group is measured as the number of employed people of a given age as a ratio of the total number of people in that same age group.

Employment levels are likely to be affected by changes in the survey design, the survey scope, the survey conduct and adjustments to the population controls based on census results and intercensal population estimates between censuses. Despite these changes, the employment rates shown here are fairly consistent over time.

Employment is generally measured through national labour force surveys. In accordance with the ILO Guidelines, employed persons are those aged 15 or over who report that they have worked in gainful employment for at least one hour in the previous week or who had a job but were absent from work in the reference week. Those not in employment consist of persons who are classified as either unemployed or inactive, in the sense that they are not included in the labour force for reasons of experiencing difficulty to find a job, study, incapacity or the need to look after young children or elderly relatives or personal choice.

There are series breaks due to a major redesign of the national labour force survey in Chile between 2009 and 2010, in Israel between 2011 and 2012 and in Turkey between 2013 and 2014. For Israel there was a change from a quarterly to a monthly survey as well as a change in concept from “civilian” to “total” labour force.

Overview Employment rates for people aged 25 to 54 (prime-age) are relatively similar between OECD countries, with rates in all countries except Turkey ranging between 62.4% and 86.9% in 2014. Eight countries have primeage rates below the OECD average whereas the rates are 6 or more percentage points above the average in eleven countries. Cross country differences are larger when looking at the youngest age group (aged 15-24) where, in 2014, employment rates ranged between less than 25% in eight countries – Greece, Italy, Spain, Luxembourg, the Slovak Republic, Portugal, Belgium and Hungary – to over 60% in just two countries – Switzerland and Iceland. Employment rates for the oldest age group (aged 55-64) also vary considerably, between 70% or more in five countries – Switzerland, Norway, Sweden, New Zealand and Iceland – to less than 40% in three countries – Turkey, Greece and Slovenia. As a consequence of the financial crisis, compared to 2005, prime-age employment rates have fallen quite significantly in a few countries, by more than 5 percentage points in Greece, Spain and Ireland and by 2 to 5 percentage points in Italy, Portugal, Denmark, Iceland, and the United States. The employment rates for older workers increased by 5.6 percentage points on average in the OECD area, between 2005 and 2014, with the largest increases of more than 12 percentage points recorded in Germany, Poland, Austria, Italy, the Netherlands, the Slovak Republic, Chile and Israel.

122

Sources • OECD (2015), OECD Employment Outlook, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), Ageing and Employment Policies, OECD Publishing. • OECD (2012), Better Skills, Better Jobs, Better Lives: A Strategic Approach to Skills Policies, OECD Publishing. • OECD (2010), Off to a Good Start? Jobs for Youth, OECD Publishing.

Statistical publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Ageing and Employment Policies, www.oecd.org/ employment/emp/ageingandemploymentpolicies.htm. • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. • Youth employment and unemployment, www.oecd.org/ employment/emp/action-plan-youth.htm. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED EMPLOYMENT RATES BY AGE GROUP

Employment rates by age group As a percentage of population in that age group Persons 15-24 in employment

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Persons 25-54 in employment

Persons 55-64 in employment

2000

2005

2010

2014

2000

2005

2010

2014

2000

2005

2010

2014

61.7 52.6 29.1 56.2 .. 36.4 66.0 30.2 41.1 .. .. 27.6 33.5 .. 50.4 28.2 26.5 42.8 29.4 .. .. 68.7 54.2 57.7 24.5 42.2 29.0 32.8 32.5 .. .. .. 56.7 59.7 .. .. .. .. .. .. 34.6 ..

63.3 51.6 27.5 57.7 25.4 27.5 62.3 30.7 40.5 30.4 41.9 25.0 21.8 70.5 48.7 26.6 25.7 40.9 29.9 24.9 44.6 65.2 56.3 53.4 22.5 35.3 25.6 34.0 38.5 39.0 59.9 .. 54.3 53.9 36.0 42.5 43.6 .. .. .. 33.1 ..

60.5 52.8 25.2 54.9 30.5 25.2 58.1 25.4 38.8 30.1 46.3 20.1 18.3 61.7 31.5 27.0 20.3 38.5 23.0 21.2 42.5 63.0 49.4 51.5 26.4 27.9 20.7 34.1 25.0 38.8 62.5 30.0 46.8 45.0 33.9 39.0 46.0 .. .. .. 34.2 12.8

57.7 52.1 23.2 55.6 30.1 27.1 53.8 33.3 41.4 27.9 46.1 13.3 23.5 69.2 28.4 44.5 15.6 40.3 25.8 20.4 41.2 58.8 51.7 50.2 25.8 22.4 21.8 26.8 16.7 42.8 61.7 33.5 48.1 47.6 32.4 39.7 43.4 .. .. .. 33.4 12.3

76.2 82.6 77.4 79.9 .. 81.6 84.1 74.5 80.9 .. .. 70.5 73.0 .. 75.3 70.4 68.0 78.7 72.2 .. .. 81.7 78.2 85.4 70.9 81.8 74.7 82.6 68.4 .. .. .. 80.2 81.5 .. .. .. .. .. .. 80.2 ..

78.8 81.6 78.3 81.3 67.5 82.0 84.5 79.2 81.7 80.8 77.4 74.0 73.7 87.7 78.0 70.6 72.3 79.2 73.4 80.7 68.9 82.9 81.5 83.3 69.6 80.7 75.3 83.8 74.8 83.5 85.1 .. 81.3 79.3 77.0 75.8 .. .. .. .. 82.9 ..

79.5 83.3 80.0 80.5 72.0 82.2 82.8 74.9 81.6 82.0 81.5 73.2 72.5 82.9 70.3 73.9 71.1 80.7 73.8 82.3 69.1 84.7 79.9 84.7 77.2 79.2 75.8 83.7 70.0 84.0 85.8 55.4 79.8 75.1 77.7 75.2 .. .. .. .. 83.6 56.8

78.8 83.5 79.1 81.2 74.9 83.8 82.0 80.9 80.5 79.8 83.5 62.4 79.3 85.1 72.6 78.2 67.9 82.2 75.7 83.8 70.1 81.7 81.7 83.9 78.4 77.4 76.8 81.9 67.4 85.4 86.9 58.8 82.1 76.7 77.4 76.0 .. .. .. .. 85.7 57.5

46.0 28.9 26.3 48.1 .. 36.3 55.7 45.0 41.7 .. .. 38.9 22.2 .. 45.3 46.7 27.7 62.8 57.8 .. .. 38.2 56.8 65.2 28.4 50.7 21.4 22.8 37.0 .. .. .. 50.7 57.8 .. .. .. .. .. .. 34.8 ..

53.5 30.0 31.8 54.8 51.0 44.5 59.5 55.7 52.7 38.6 45.5 42.0 33.0 84.3 51.6 52.4 31.4 63.9 58.7 31.7 53.2 46.1 69.5 65.5 27.2 50.4 30.3 30.7 43.1 69.5 65.1 .. 56.8 60.8 42.3 51.7 .. .. .. .. 45.9 ..

60.6 41.2 37.4 58.1 58.0 46.5 58.5 53.8 56.3 39.7 57.7 42.4 33.6 79.8 50.2 59.8 36.5 66.0 60.9 39.7 53.5 53.7 73.2 68.6 34.1 49.5 40.6 35.1 43.6 70.5 68.0 29.6 57.2 60.3 46.2 54.0 .. .. .. .. 46.7 37.9

61.5 45.1 42.7 60.4 64.2 54.0 63.2 64.0 59.1 46.9 65.6 34.1 41.8 83.6 53.0 65.1 46.2 68.6 65.6 42.6 55.0 59.9 76.2 72.2 42.5 47.8 44.8 35.4 44.3 74.0 71.6 31.4 61.0 61.3 51.8 57.3 .. .. .. .. 47.4 40.6

1 2 http://dx.doi.org/10.1787/888933336076

Employment rates for age group 15-24 Persons in employment as a percentage of population in that age group 2014

2000 or first available year

80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933334898

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123

LABOUR • EMPLOYMENT AND HOURS WORKED

PART-TIME EMPLOYMENT Opportunities for part-time work are especially important for people who do not want to work full-time because of family circumstances, such as parents (often woman) with young children and those caring for the elderly. Indeed, recent surveys in a large number of OECD countries show that most people who work part-time do so by choice. This suggests that countries with little part-time employment could foster increased employment by policies that promote the availability of part-time jobs.

Employment is generally measured through household labour force surveys. According to the ILO Guidelines, employed persons are those aged 15 or over who report that they have worked in gainful employment for at least one hour in the previous week or who had a job but were absent from work in the reference week. The rates shown here refer to the number of persons who usually work less than 30 hours per week in their main job as a percentage of the total number of those in employment.

Definition

Comparability

Part-time employment refers to persons who usually work less than 30 hours per week in their main job. This definition has the advantage of being comparable across countries as national definitions of part-time employment vary greatly from one country to another. Part-time workers include both employees and the self-employed.

All OECD countries use the ILO Guidelines for measuring employment. Operational definitions used in national labour force surveys may, however, vary slightly across countries. Employment levels are also likely to be affected by changes in the survey design, the survey scope and the survey conduct. Despite these changes, employment rates are fairly consistent over time. Information on the number of hours usually worked is mostly collected in household labour force surveys. Part-time rates are considered to be of good comparability.

Overview The incidence of part-time employment for the OECD area as a whole was 16.7% in 2014. But this incidence differed significantly across countries. In Australia, the Netherlands and Switzerland, over 25% of all those in employment were working part-time, while this share was under 10% in seven Eastern European countries and below 5% in the Czech Republic, Hungary, and the Slovak Republic. In Russia this rate is also low at 4% and at 8% in South Africa. In recent years, part-time work has accounted for a substantial share of overall employment growth in many OECD countries. For the OECD as a whole, the incidence of part-time employment increased by close to 3 percentage points between 2002 and 2014, while overall employment rates declined since the onset of the jobs crisis in late 2007. Part-time employment rates grew by 5 percentage points or more in Austria, Japan, Mexico and the Netherlands but also in Greece, Italy, Spain and Ireland that were hard hit by the crisis. The largest increase in part-time employment rates occurred in Austria (9.2 percentage points) which benefited from an overall increase in employment rates of women over the 2002-14 period. In Iceland and Poland as well as in Russia, part-time employment declined, by more than 3 percentage points in 2002-14. The growth of part-time employment has been especially important for groups that are often underrepresented in the labour force such as women – over 5 percentage points in Austria, Greece, Italy, Japan, Korea, Slovenia and Spain; youth – over 20 percentage points in Denmark, Ireland, Slovenia and Spain; and older workers – over 5 percentage points in Austria, Ireland, Italy, Mexico and Spain.

124

There are two series breaks due a major redesign of the national labour force survey in Chile between 2009 and 2010 and in Israel between 2011 and 2012. For Israel there was a change from a quarterly to a monthly survey as well as a change in concept from “civilian” to “total” labour force.

Sources • OECD (2015), OECD Employment Outlook, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), How’s Life?, OECD Publishing. • OECD (2007), Babies and Bosses – Reconciling Work and Family Life, OECD Publishing.

Statistical publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED PART-TIME EMPLOYMENT

Incidence of part-time employment As a percentage of total employment Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

24.0 13.3 17.6 18.8 5.2 2.9 15.5 7.2 11.0 13.8 18.8 5.4 2.6 20.1 18.4 15.5 11.6 17.7 7.6 12.5 13.5 33.9 22.5 20.6 11.7 9.7 1.6 4.9 7.6 13.8 24.8 6.6 23.1 13.1 14.8 14.4 17.9 .. .. .. 3.8 ..

24.3 13.7 18.3 19.0 5.7 3.2 16.2 7.8 11.3 13.0 19.6 5.6 3.2 16.0 18.9 15.3 11.7 18.2 7.7 13.3 13.4 34.5 22.1 21.0 11.5 10.0 2.2 5.0 7.8 14.1 25.1 6.0 23.4 13.2 14.9 14.6 18.0 .. .. .. 5.3 ..

23.8 15.3 18.5 18.5 6.6 3.1 17.0 7.2 11.3 13.3 20.1 5.9 3.3 16.6 18.9 15.2 14.8 18.1 8.4 13.2 15.1 35.0 21.8 21.1 12.0 9.8 2.6 7.5 8.3 14.4 24.8 6.1 23.4 13.2 15.5 15.0 18.2 .. .. .. 5.4 ..

24.0 16.4 18.5 18.4 7.2 3.3 17.3 6.9 11.2 13.2 21.5 6.4 3.2 16.4 19.3 15.1 14.7 18.3 9.0 13.9 16.8 35.6 21.6 20.8 11.7 9.6 2.4 7.4 10.8 13.5 25.1 5.6 23.0 12.8 15.9 15.2 19.0 .. .. .. 5.6 ..

23.9 17.0 18.7 18.2 7.7 3.3 17.9 6.8 11.4 13.2 21.8 7.4 2.7 16.0 19.3 15.2 15.0 18.0 8.8 12.7 17.0 35.4 21.2 21.1 10.8 9.4 2.4 7.8 10.7 13.4 25.5 7.6 23.2 12.6 16.0 15.2 19.2 .. .. .. 5.3 ..

23.7 17.3 18.1 18.3 8.0 3.5 17.3 6.8 11.7 13.3 22.0 7.7 2.8 15.9 19.9 14.8 15.3 18.9 8.9 13.1 17.6 35.9 21.9 20.4 10.1 10.0 2.4 7.8 10.5 14.4 25.4 8.1 22.9 12.6 16.0 15.4 18.3 .. .. .. 5.1 ..

23.8 17.8 18.3 18.6 9.1 3.5 17.8 6.3 11.5 12.9 21.8 7.9 3.1 15.1 20.9 14.7 16.0 19.6 9.3 13.4 17.6 36.1 22.1 20.3 9.3 9.9 2.6 7.5 10.9 14.4 25.9 8.5 23.0 12.8 16.0 15.6 18.0 .. .. .. 5.0 7.9

24.6 18.7 18.2 19.3 10.5 3.9 18.8 8.5 12.2 13.3 21.9 8.5 3.5 17.5 23.8 14.8 15.9 20.3 9.9 16.4 17.9 36.7 22.4 20.4 8.7 9.8 2.9 8.3 11.6 14.6 26.5 11.1 23.9 14.1 16.4 16.4 17.8 .. .. .. 4.7 8.1

24.8 19.2 18.3 19.6 17.4 4.3 19.2 8.8 12.5 13.6 21.7 8.9 3.7 18.4 24.9 14.0 16.4 20.2 10.7 15.8 18.9 37.1 21.8 20.1 8.7 9.6 3.7 9.4 12.2 14.5 26.1 11.5 24.6 13.5 16.7 16.6 .. .. .. .. 4.3 7.7

24.7 19.0 18.8 19.3 17.2 3.9 19.2 8.9 12.7 13.6 22.3 9.1 4.8 17.0 25.7 13.7 16.7 20.6 13.5 16.0 18.2 37.2 22.1 20.0 8.3 11.7 4.0 8.6 12.7 14.3 25.9 11.7 24.7 12.6 17.0 16.5 16.0 .. .. .. 4.1 7.4

24.6 19.4 18.7 19.0 16.7 4.3 19.4 8.2 13.0 13.7 22.2 9.8 4.8 17.3 25.0 15.0 17.8 20.5 10.2 15.5 19.4 37.8 22.3 19.8 8.0 12.5 3.8 7.9 13.6 14.3 26.0 11.8 25.0 13.4 17.3 16.9 16.2 .. .. .. 4.1 7.7

24.9 19.9 18.2 19.1 16.5 4.9 19.2 8.0 13.0 14.0 22.6 10.3 4.6 17.4 24.2 14.4 18.5 21.9 11.1 15.3 19.0 38.7 21.6 19.5 7.7 12.0 4.3 8.6 14.7 14.3 26.4 12.3 24.6 12.3 17.6 16.8 16.4 .. .. .. 4.3 8.3

25.2 20.9 18.1 19.3 17.0 4.8 19.7 7.6 13.3 14.2 22.3 11.2 4.2 16.7 23.4 14.7 18.8 22.7 10.5 15.5 18.7 38.5 21.5 18.8 7.1 11.0 4.9 9.6 14.7 14.2 26.9 10.6 24.1 12.3 17.4 16.7 .. .. .. .. 4.0 8.0

1 2 http://dx.doi.org/10.1787/888933336520

Incidence of part-time employment As a percentage of total employment 2014 or latest available year

2002 or first available year

40 35 30 25 20 15 10 5 0

1 2 http://dx.doi.org/10.1787/888933335407

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125

LABOUR • EMPLOYMENT AND HOURS WORKED

SELF-EMPLOYMENT Self-employment may be seen either as a survival strategy for those who cannot find any other means of earning an income or as evidence of entrepreneurial spirit and a desire to be one’s own boss. Self-employment rates reflect these various motives.

Definition Employment is generally measured through national labour force surveys. According to the ILO Guidelines, employed persons are defined as those aged 15 or over who report that they have worked in gainful employment for at least one hour in the previous week or who had a job but were absent from work in the reference week. Self-employed persons include employers, own-account workers, members of producers’ co-operatives, and unpaid family workers. People in the last of these groups do not have a formal contract to receive a fixed amount of income at regular intervals, but they share in the income generated by the enterprise; unpaid family workers are particularly important in farming and retail trade. Note that all persons

who work in corporate enterprises, including company directors, are considered to be employees. Rates are the percentages of the self-employed in total employment.

Comparability All OECD countries use ILO Guidelines for measuring employment. Operational definitions used in national labour force surveys may, however, vary slightly across countries. Only unincorporated self-employed are included in self-employed in Australia, Canada and the United States. Employment levels are also likely to be affected by changes in the survey design, questions sequencing and/or the ways in which surveys are conducted. Despite this, self-employment rates are likely to be fairly consistent over time.

Overview In 2014, the share of self-employed workers in total employment ranged from under 7% in Luxembourg and the United States to well over 30% in Brazil, Greece, Mexico and Turkey. In general, self-employment rates are highest in countries with low per capita income although Italy, with a self-employment rate of around 25%, is an exception. Ireland and Spain also combine high per capita incomes and high self-employment rates. Over the period 2000-14, self-employment rates have fallen in more than two thirds of countries and by 2.4 percentage points in the OECD area. These falls have mostly occurred prior to the onset of the global financial crisis in late 2007. However the Czech Republic, the Netherlands, Slovenia and the United Kingdom saw moderate to strong increases and the Slovak Republic even had an increase exceeding 7 percentage points, albeit from low levels. Conversely, and starting from a higher level, there have been sharp declines in selfemployment rates of 3 percentage points or more in Turkey, Korea, Greece, Portugal, Poland, Mexico and Italy but also in Australia, Hungary, Iceland, Japan, New Zealand, and Switzerland. Levels and changes in total self-employment rates conceal significant differences between men and women. In 2014, only Mexico and Turkey recorded selfemployment rates for women higher than those for men with many of them working as unpaid family workers. In the case of Turkey, almost 40% of all working women are self-employed, albeit down from 64.7% in 2000.

126

Sources • OECD (2014), OECD Labour Force Statistics, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), Financing SMEs and Entrepreneurs, OECD Publishing. • OECD (2015), OECD Employment Outlook, OECD Publishing. • OECD (2014), OECD Studies on SMEs and Entrepreneurship, OECD Publishing. • OECD (2005), OECD SME and Entrepreneurship Outlook 2005, OECD Publishing.

Statistical publications • OECD (2014), Entrepreneurship at a Glance, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. • SMEs and entrepreneurship, www.oecd.org/industry/smes. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED SELF-EMPLOYMENT

Self-employment rates As a percentage of total employment by gender Women

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Men

Total

2000

2012

2013

2014

2000

2012

2013

2014

2000

2012

2013

2014

10.3 12.3 13.5 9.2 24.5 10.2 5.7 6.0 9.2 7.3 7.9 39.0 10.5 11.0 8.6 9.3 22.0 18.3 38.4 6.9 35.2 9.4 14.5 4.8 24.8 24.5 4.6 13.0 16.6 5.7 12.3 64.7 8.3 6.1 14.8 15.1 .. .. .. .. 9.7 ..

8.4 10.5 10.5 8.0 24.8 13.5 5.6 5.1 8.9 7.5 8.4 31.1 8.7 8.8 7.5 8.7 18.3 10.7 26.0 .. 35.1 11.5 12.4 4.1 19.2 17.7 9.9 12.8 12.7 5.9 10.3 45.7 9.6 5.6 12.4 13.2 27.1 .. .. .. 6.0 ..

8.1 10.6 10.7 8.1 25.1 13.5 5.6 5.9 8.8 7.6 8.1 31.9 8.2 8.4 8.1 9.0 18.3 10.4 25.3 .. 33.8 12.1 11.7 4.4 18.4 17.5 9.8 13.6 13.1 6.2 10.2 43.4 9.6 5.6 12.3 13.0 26.8 .. .. .. 6.4 ..

.. 10.5 12.3 8.0 25.6 12.9 .. 5.7 9.4 7.6 8.0 29.8 7.8 7.8 7.9 9.1 18.5 .. 24.6 .. 32.7 .. 11.8 4.3 17.7 14.9 9.9 16.0 13.0 6.2 10.0 39.8 .. 5.4 .. 12.8 .. .. .. .. 6.3 ..

16.0 14.0 17.5 11.8 32.4 19.1 12.1 11.4 17.8 10.9 13.4 43.7 19.1 24.0 25.9 18.3 32.3 15.5 35.7 7.7 36.4 12.6 25.7 9.8 29.5 27.5 10.8 18.6 22.2 14.5 13.9 46.5 16.7 8.6 20.9 19.6 .. .. .. .. 10.5 ..

12.4 15.4 17.6 9.7 25.3 22.3 12.3 12.6 18.2 12.3 14.4 40.4 14.5 15.9 24.8 16.2 30.2 12.6 29.8 .. 32.8 18.4 20.4 9.4 25.0 26.5 19.8 19.2 21.3 14.6 10.4 33.5 19.0 7.8 20.2 18.0 34.3 .. .. .. 7.8 ..

12.2 15.6 18.8 9.5 25.7 21.3 12.1 12.4 18.0 12.6 14.0 40.4 14.0 16.7 24.9 15.8 30.1 12.4 29.0 .. 32.5 19.2 18.8 9.3 24.5 26.4 20.2 19.6 22.1 14.5 10.5 32.7 18.7 7.5 20.0 17.7 34.4 .. .. .. 8.1 ..

.. 15.8 18.3 9.4 26.0 22.1 .. 12.5 18.5 12.6 13.6 39.4 13.7 16.8 25.5 15.6 29.7 .. 28.4 .. 31.7 .. 18.3 9.8 24.3 24.6 19.7 20.7 21.7 14.1 10.0 31.5 .. 7.4 .. 17.5 .. .. .. .. 8.1 ..

13.5 13.3 15.8 10.6 29.8 15.2 9.1 8.8 13.7 9.3 11.0 42.0 15.2 18.0 18.8 14.2 28.5 16.6 36.8 7.4 36.0 11.2 20.6 7.4 27.4 26.1 8.0 16.1 20.2 10.3 13.2 51.4 12.8 7.4 18.3 17.7 .. .. .. .. 10.1 ..

10.6 13.1 14.3 8.9 25.1 18.5 9.1 8.9 13.6 10.0 11.6 36.6 11.8 12.5 16.7 12.7 25.2 11.8 28.2 6.1 33.7 15.2 16.6 6.9 22.4 22.2 15.5 16.2 17.4 10.5 10.4 37.1 14.6 6.8 16.6 15.9 31.2 .. .. .. 6.9 ..

10.3 13.2 15.1 8.8 25.4 17.9 9.0 9.2 13.5 10.2 11.2 36.9 11.3 12.7 17.1 12.6 25.1 11.5 27.4 6.2 33.0 15.9 15.4 7.0 21.8 22.1 15.6 16.9 17.9 10.6 10.4 35.9 14.4 6.6 16.5 15.6 31.2 .. .. .. 7.3 ..

.. 13.3 15.5 8.8 25.9 18.1 .. 9.1 14.1 10.2 11.0 35.4 11.0 12.5 17.4 12.5 24.9 .. 26.8 .. 32.1 .. 15.3 7.2 21.4 19.9 15.4 18.6 17.7 10.3 10.0 34.0 .. 6.5 .. 15.4 .. .. .. .. 7.2 ..

1 2 http://dx.doi.org/10.1787/888933336573

Self-employment rates: total As a percentage of total employment 2014 or latest available year

2000

60

50

40

30

20

10

0

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LABOUR • EMPLOYMENT AND HOURS WORKED

EMPLOYMENT BY REGION Inequalities in economic performance across regions partly reflect the extent to which each region is able to utilise its available labour resources, and especially to increase job opportunities for under-represented groups.

Definition Employed persons are all persons who during the reference week of the survey worked at least one hour for pay or profit, or were temporarily absent from such work. The employment rate is the number of employed persons as a percentage of the working age (15-64) population.

Comparability

TL3. For Brazil, China, Russia and South Africa only large regions have been defined. Data on employment growth refer to period 2000-14 for all countries, except for Germany and Slovenia, the first available year is 2001, and 2004 for Turkey. Data on employment increase contributed by the top 10% regions include only countries with average positive growth of employment over 2000-14. Greece and Japan are excluded. Denmark is excluded due to lack of data on comparable years. Data on regional employment growth refer to small regions (TL3), except for Iceland, Israel, Mexico, Poland, Portugal, Slovenia and Russia where it is large regions (TL2). Data on female employment refer to large regions (TL2).

As for other regional statistics, comparability is affected by differences in the meaning of the word “region”. This results in significant differences in terms of geographic area and population both within and among countries. To address this issue, the OECD has classified regions within each country based on two levels: territorial level 2 (TL2, large regions) and territorial level 3 (TL3, small regions). Labour market data for Canada refers to a different regional grouping, labelled non-official grids (NOG) comparable to

Overview Differences in employment opportunities within countries are often larger than across countries. In almost half of the countries, differences in regional employment growth rates across regions were above 2 percentage points over the period 2000-14. Regional differences in employment in OECD countries were the largest in Austria, Poland, Italy, and the United States, and among the emerging economies, Russia. A small number of regions drive employment creation at the national level. On average, almost half of overall employment creation in OECD countries between 2000 and 2014 was accounted for by just 10% of regions. The regional contribution to national employment creation was particularly concentrated in certain countries. In Greece, Japan, Australia and the United States, more than two-third of employment growth was spurred by 10% of regions. Comparing the periods before and after the peak of the recent economic crisis, respectively 2000-07 and 2009-14, the regional concentration of employment creation has increased in 20 of the 30 countries, resulting in higher differences in employment among regions. In one fourth of OECD regions, the difference between employment rates for men and women is higher than 20 percentage points. In 2014, OECD countries with the highest regional disparities of difference in gender employment rates were Mexico, Turkey, Chile, the United States and Israel.

128

Sources • OECD (2013), OECD Regions at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2014), OECD Regional Outlook, OECD Publishing. • OECD (2012), Promoting Growth in All Regions, OECD Publishing. • OECD (2009), Regions Matter: Economic Recovery, Innovation and Sustainable Growth, OECD Publishing.

Online databases • OECD Regional Database.

Websites • Regional Development, www.oecd.org/regional/regionalpolicy. • Regions at a Glance Interactive, http://rag.oecd.org. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED EMPLOYMENT BY REGION

Differences in annual employment growth across regions Percentage, 2014

Maximum

Minimum

Country average

5 4 3 2 1 0 -1 -2 -3

1 2 http://dx.doi.org/10.1787/888933335430

Share of national employment growth due to the 10% of most dynamic regions Percentage 2009-2014

2000-2014

2000-2007

120

100

80

60

40

20

0

1 2 http://dx.doi.org/10.1787/888933335853

Regional disparities in the employment rate gender difference (men-women) Percentage point, 2014

Maximum

Minimum

Country average

60 50 40 30 20 10 0 -10

1 2 http://dx.doi.org/10.1787/888933335978

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LABOUR • EMPLOYMENT AND HOURS WORKED

HOURS WORKED Lower hours worked is one of the forms in which the benefits of productivity growth have been shared by people. Hours worked is also one of the ways that labour markets adjust during business cycles. In recent years, governments of several OECD countries have also pursued policies to make it easier for parents to reconcile work and family life, and some of these policies have tended to reduce working time.

Definition The average number of hours worked per year is calculated as the total number of hours actually worked over the year divided by the average number of people in employment. The data cover employees and self-employed workers; they include both full-time and part-time employment. Employment is generally measured through household labour force surveys. In accordance with the ILO Guidelines, employed persons are defined as those aged 15 years or over who report that they have worked in gainful employment for at least one hour in the previous week or were temporarily absent from work.

Estimates of the hours actually worked are based on national labour force surveys in many countries, while others use establishment surveys, administrative records or a combination of sources. Actual hours worked include regular work hours of full-time and part-time workers, over-time (paid and unpaid), hours worked in additional jobs, and time not worked because of public holidays, annual paid leave, illness, maternity and parental leave, strikes and labour disputes, bad weather, economic conditions and several other minor reasons.

Comparability Data are based on a range of sources of varying reliability. Annual working hours reported for 34 OECD countries and Russia are provided by national statistical offices and are estimated using the best available sources. These national data are intended for comparisons of trends in productivity and labour inputs (or total hours) and are not fully suitable for inter-country comparisons of the level of hours worked per worker because of differences in their sources and other uncertainties about their international comparability.

Overview Over the period from 2002 to 2014, average hours worked per employed person have fallen in almost all OECD countries except Norway, the Slovak Republic and Sweden. This decline is more pronounced in twothirds of countries than the decline in the previous decade, while annual hours worked remained stable in Belgium, the Netherlands, Sweden, the Slovak Republic and the United Kingdom. For the OECD as a whole, the average hours worked per employed person fell from 1 819 annual hours in 2002 to 1 770 in 2014; this is equivalent to a reduction of more than one hour per week over a year with 45 work weeks. Sharp reductions in annual hours worked over this period occurred in about one-third of OECD countries where they fell by 80 or more hours, with a further decline of 150 or more hours in Korea (minus 340), Chile (minus 260), albeit from high levels, Austria, Hungary, Iceland, Israel, Estonia, Turkey, Italy and Ireland. Most of the decline in hours worked materialised following the onset of the global crisis in ten countries - some hard hit by the crisis, such as Estonia, Greece, Hungary, and Italy, but also Austria, Chile, Korea, Israel, Switzerland and Turkey. Although one should exercise caution when comparing levels across countries, actual hours worked are significantly above the OECD average, by 200 or more hours, in Mexico, Korea, Greece and Chile and significantly below the OECD average, by 200 or less hours, in Germany, the Netherlands, Norway, Denmark, France, Slovenia and Switzerland.

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Sources • OECD (2015), OECD Employment Outlook, OECD Publishing.

Further information Analytical publications • OECD (2015), How’s Life?, OECD Publishing.

Methodological publications • OECD (2009), Productivity Measurement and Analysis, OECD Publishing. • OECD (2004), “Recent Labour Market Developments and Prospects: Clocking In (and Out): Several Facets of Working Time”, OECD Employment Outlook 2004, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Productivity statistics, www.oecd.org/statistics/productivity. • Online OECD employment database, www.oecd.org/ employment/database. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • EMPLOYMENT AND HOURS WORKED HOURS WORKED

Average hours actually worked Hours per year per person in paid employment Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

1 731 1 792 1 582 1 754 2 250 1 816 1 487 1 973 1 714 1 487 1 431 2 093 2 005 2 012 1 904 1 993 1 827 1 798 2 464 1 663 2 271 1 435 1 826 1 414 1 979 1 894 1 754 1 614 1 765 1 595 1 614 1 943 1 684 1 810 .. 1 819 .. .. .. .. 1 982 ..

1 736 1 784 1 578 1 740 2 235 1 806 1 482 1 978 1 705 1 484 1 425 2 091 1 978 1 973 1 887 1 974 1 816 1 799 2 424 1 658 2 277 1 427 1 823 1 401 1 984 1 887 1 698 1 616 1 756 1 582 1 627 1 943 1 674 1 800 .. 1 812 .. .. .. .. 1 993 ..

1 736 1 787 1 572 1 760 2 232 1 817 1 481 1 986 1 707 1 513 1 422 2 083 1 986 1 979 1 875 1 942 1 815 1 787 2 392 1 614 2 271 1 448 1 830 1 421 1 983 1 893 1 742 1 627 1 742 1 605 1 657 1 918 1 674 1 802 .. 1 813 .. .. .. .. 1 993 ..

1 730 1 764 1 565 1 747 2 157 1 817 1 474 2 008 1 697 1 507 1 411 2 136 1 987 1 970 1 883 1 931 1 812 1 775 2 351 1 597 2 281 1 434 1 815 1 423 1 994 1 895 1 769 1 590 1 726 1 605 1 652 1 936 1 673 1 799 .. 1 807 .. .. .. .. 1 989 ..

1 720 1 746 1 575 1 745 2 165 1 799 1 479 2 001 1 693 1 484 1 425 2 125 1 984 1 958 1 879 1 919 1 813 1 784 2 346 1 608 2 281 1 430 1 795 1 420 1 985 1 883 1 774 1 562 1 716 1 599 1 643 1 944 1 669 1 800 .. 1 808 .. .. .. .. 1 998 ..

1 711 1 736 1 579 1 741 2 128 1 784 1 456 1 998 1 691 1 500 1 424 2 111 1 979 1 932 1 865 1 931 1 818 1 785 2 306 1 544 2 262 1 430 1 774 1 426 1 976 1 900 1 791 1 551 1 704 1 612 1 633 1 911 1 677 1 797 .. 1 802 .. .. .. .. 1 999 ..

1 717 1 729 1 572 1 734 2 095 1 790 1 450 1 968 1 685 1 507 1 418 2 106 1 982 1 934 1 844 1 929 1 807 1 771 2 246 1 584 2 260 1 430 1 761 1 430 1 969 1 887 1 793 1 566 1 713 1 617 1 623 1 900 1 659 1 791 .. 1 794 .. .. .. .. 1 997 ..

1 690 1 673 1 554 1 702 2 074 1 779 1 446 1 831 1 661 1 489 1 373 2 081 1 963 1 849 1 812 1 927 1 776 1 714 2 232 1 628 2 253 1 422 1 740 1 407 1 948 1 887 1 780 1 569 1 720 1 609 1 615 1 881 1 651 1 767 .. 1 700 .. .. .. .. 1 974 ..

1 692 1 665 1 560 1 703 2 068 1 800 1 436 1 875 1 668 1 494 1 390 2 019 1 958 1 834 1 801 1 918 1 777 1 733 2 187 1 643 2 242 1 421 1 755 1 415 1 940 1 890 1 805 1 580 1 710 1 635 1 613 1 877 1 652 1 777 .. 1 776 .. .. .. .. 1 976 ..

1 699 1 670 1 572 1 700 2 047 1 806 1 455 1 919 1 662 1 496 1 393 2 131 1 976 1 878 1 801 1 920 1 773 1 728 2 090 1 607 2 250 1 422 1 746 1 421 1 938 1 867 1 793 1 557 1 717 1 632 1 607 1 864 1 625 1 786 .. 1 773 .. .. .. .. 1 979 ..

1 678 1 649 1 573 1 713 2 024 1 776 1 443 1 886 1 650 1 490 1 374 2 058 1 889 1 853 1 806 1 910 1 734 1 745 2 163 1 615 2 226 1 426 1 734 1 420 1 929 1 849 1 789 1 537 1 704 1 618 1 592 1 855 1 654 1 789 .. 1 773 .. .. .. .. 1 982 ..

1 663 1 629 1 576 1 708 2 015 1 763 1 438 1 866 1 643 1 474 1 363 2 060 1 880 1 846 1 815 1 867 1 733 1 734 2 079 1 649 2 237 1 421 1 752 1 408 1 918 1 852 1 772 1 550 1 699 1 607 1 576 1 832 1 669 1 788 .. 1 770 .. .. .. .. 1 980 ..

1 664 1 629 .. 1 704 1 990 1 776 1 436 1 859 1 645 1 473 1 371 2 042 1 858 1 864 1 821 1 853 1 734 1 729 2 124 1 643 2 228 1 425 1 762 1 427 1 923 1 857 1 763 1 561 1 689 1 609 1 568 .. 1 677 1 789 .. 1 770 .. .. .. .. 1 985 ..

1 2 http://dx.doi.org/10.1787/888933336245

Average hours actually worked Hours per year per person in paid employment 2014 or latest available year

2002

2 500

2 000

1 500

1 000

500

0

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131

LABOUR • UNEMPLOYMENT

UNEMPLOYMENT RATES Unemployment

The unemployment rate is one measure of the extent of labour market slack, as well as being an important indicator of economic and social well-being. Breakdowns of unemployment by gender show how women are faring compared to men.

When unemployment is high, some persons become discouraged and stop looking for work; they are then excluded from the labour force. This implies that the unemployment rate may fall, or stop rising, even though there has been no underlying improvement in the labour market.

Definition Unemployed persons are defined as those who report that they are without work, that they are available for work and that they have taken active steps to find work in the last four weeks. The ILO Guidelines specify what actions count as active steps to find work; these include answering vacancy notices, visiting factories, construction sites and other places of work, and placing advertisements in the press as well as registering with labour offices. The unemployment rate is defined as the number of unemployed persons as a percentage of the labour force, where the latter consists of the unemployed plus those in paid or self-employment.

Overview When looking at total unemployment rates averaged over the three years ending 2014, countries can be divided into three groups: a low unemployment group with rates below 5% (Korea, Norway, Japan, Switzerland and Mexico); a middle group with unemployment rates between 5% and 10%; and a high unemployment group with unemployment rates of 10% and above (Italy, Ireland, the Slovak Republic, Portugal, South Africa, Spain and Greece). In almost two thirds of countries, unemployment rates decreased in 2014, with marked declines (by more than 1.5 percentage point) in Hungary, Portugal, Ireland and Spain. The breakdown of unemployment by gender shows that, in line with the overall rate, OECD unemployment rates for both men and women was significantly higher in 2014 than in 2008. The unemployment rate for men, which had been lower than the rate for women in 2008, rose considerably faster and by 2009 was higher than the rate for women. This is first explained by the fact that job losses over the early stages of the crisis were particularly severe in sectors which traditionally have been occupied by men – namely construction, manufacturing and mining and quarrying. Between 2 0 0 9 a n d 2 0 1 0 , t h e r i s e i n t h e ove ra l l O E C D unemployment rates decelerated faster for men, and b e t we e n 2 0 1 0 a n d 2 0 1 4 , t h e m e n t o wo m e n unemployment ratio has decreased in about two third of the countries. However, in 2014, the rate for men was still higher than the rate for women in about half of the countries.

132

Comparability All OECD countries use the ILO Guidelines for measuring unemployment in their national labour force surveys. The operational definitions used in national labour force surveys may, however, vary slightly across countries. Unemployment levels are also likely to be affected by changes in the survey design and the survey conduct. Despite these limits, unemployment rates are of good international comparability and fairly consistent over time. Unemployment rates differ from rates derived from registered unemployed at labour offices that are often published in individual countries. Data on registered unemployment have limited international comparability, as the rules for registering at labour offices vary from country to country. There are series breaks due to a major redesign of the national labour force survey in Chile between 2009 and 2010, in Israel between 2011 and 2012 and in Turkey between 2013 and 2014. For Israel there was a change from a quarterly to a monthly survey as well as a change in concept from “civilian” to “total” labour force.

Sources • OECD (2015), Main Economic Indicators, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), OECD Employment Outlook, OECD Publishing. • Venn, D. (2012), “Eligibility Criteria for Unemployment Benefits”, OECD Social, Employment and Migration Working Papers, No. 131.

Statistical publications • OECD (2014), OECD Labour Force Statistics, OECD Publishing. • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • UNEMPLOYMENT UNEMPLOYMENT RATES

Unemployment rates As a percentage of labour force Women

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Men

Total

2000

2008

2013

2014

2000

2008

2013

2014

2000

2008

2013

2014

6.1 3.8 8.7 6.7 10.3 10.5 5.2 13.3 10.6 .. 8.1 17.2 5.6 .. 4.2 9.2 14.5 4.5 3.7 .. .. 3.8 6.0 3.2 18.1 5.0 18.6 7.1 20.5 .. .. .. 5.0 4.1 .. .. .. .. .. .. 10.4 26.5

4.6 4.4 7.6 5.6 9.5 5.6 3.7 5.1 6.7 7.4 7.7 11.5 8.0 2.6 4.9 6.5 8.5 3.9 2.6 6.0 4.1 3.0 4.3 2.4 8.0 8.8 10.9 4.8 12.8 6.6 .. 10.0 5.1 5.4 7.4 6.0 .. .. .. .. 6.1 25.9

5.6 5.3 8.2 6.6 6.9 8.3 7.3 8.2 7.5 9.8 4.9 31.3 10.1 5.1 10.7 6.3 13.1 3.7 2.9 6.4 5.0 7.3 7.0 3.2 11.1 16.4 14.5 10.9 26.7 7.9 4.5 10.6 7.0 7.1 10.9 7.9 .. .. .. .. 5.2 26.7

6.2 5.4 7.9 6.4 6.9 7.4 6.8 6.8 7.9 10.0 4.6 30.2 7.9 4.8 9.4 5.9 13.8 3.4 3.5 5.8 4.9 7.7 6.6 3.2 9.6 14.3 13.6 10.5 25.4 7.7 4.7 11.8 5.8 6.1 10.3 7.5 .. .. .. .. 4.8 27.2

6.5 3.3 5.8 7.0 9.3 7.4 4.1 15.9 9.1 .. 7.5 7.5 7.1 .. 4.4 8.4 8.1 4.9 5.0 .. .. 2.3 6.3 3.4 14.4 3.2 18.9 6.5 9.6 .. .. .. 6.1 3.9 .. .. .. .. .. .. 10.6 20.4

4.0 3.9 6.5 6.6 6.8 3.5 3.2 5.7 6.1 6.7 7.4 5.1 7.7 3.3 7.5 5.7 5.5 4.1 3.6 4.3 3.8 2.5 4.1 2.7 6.4 6.5 8.4 4.0 10.1 5.9 .. 9.6 6.1 6.1 6.6 5.8 .. .. .. .. 6.6 19.9

5.7 5.4 8.6 7.5 5.3 5.9 6.7 9.1 8.8 10.0 5.5 24.5 10.2 5.6 15.0 6.2 11.5 4.3 3.3 5.4 4.9 7.2 5.6 3.6 9.7 16.0 14.0 9.4 25.6 8.2 4.3 7.9 8.0 7.6 10.8 7.8 .. .. .. .. 5.8 23.1

6.0 5.8 9.0 7.4 6.0 5.1 6.4 7.9 9.3 10.5 5.3 23.6 7.6 5.0 12.8 5.9 11.9 3.8 3.6 5.9 4.8 7.1 5.1 3.7 8.5 13.5 12.8 8.9 23.6 8.2 4.4 9.0 6.4 6.3 10.1 7.3 .. .. .. .. 5.5 23.3

6.3 3.5 7.0 6.8 9.7 8.8 4.6 14.6 9.8 .. 7.8 11.4 6.4 .. 4.3 8.8 10.6 4.7 4.4 .. 2.5 2.9 6.2 3.3 16.1 4.0 18.8 6.7 13.9 .. .. .. 5.6 4.0 .. .. 12.7 .. .. 6.1 10.5 23.3

4.2 4.1 7.0 6.1 7.8 4.4 3.4 5.4 6.4 7.1 7.5 7.8 7.8 2.9 6.4 6.1 6.7 4.0 3.2 5.1 3.9 2.8 4.2 2.5 7.1 7.6 9.5 4.4 11.2 6.2 .. 9.7 5.6 5.8 7.0 5.9 7.9 .. .. 8.4 6.4 22.5

5.7 5.3 8.4 7.1 5.9 7.0 7.0 8.6 8.2 9.9 5.2 27.5 10.2 5.4 13.0 6.2 12.1 4.0 3.1 5.8 4.9 7.2 6.2 3.4 10.3 16.2 14.2 10.1 26.1 8.1 4.4 8.7 7.5 7.4 10.8 7.9 5.4 .. .. 6.0 5.5 24.7

6.1 5.6 8.5 6.9 6.4 6.1 6.6 7.4 8.7 10.3 5.0 26.5 7.7 4.9 11.3 5.9 12.7 3.6 3.5 5.9 4.8 7.4 5.8 3.5 9.0 13.9 13.2 9.7 24.4 8.0 4.5 9.9 6.1 6.2 10.2 7.3 4.9 .. .. 5.8 5.2 25.1

1 2 http://dx.doi.org/10.1787/888933336753

Unemployment rates: total As a percentage of labour force

3 year average at end of period 2012-14

3 year average at beginning of period 2002-04

30

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933335684

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133

LABOUR • UNEMPLOYMENT

LONG-TERM UNEMPLOYMENT Long-term unemployment is of particular concern to the people affected and to policy makers. Apart from the mental and material stress caused to the unemployed and their families, high rates of long-term unemployment indicate that labour markets are operating inefficiently. Rates of long-term unemployment are generally lower in countries that have enjoyed high GDP growth rates in recent years. Lower rates of long-term unemployment may also occur at the onset of an economic downturn due to rising inflow of newly unemployed persons, as witnessed during the first years of the recent global economic crisis. Subsequently, long-term unemployment may gradually begin to unfold in the case of a prolonged economic and jobs crisis as is currently the case in a number of OECD countries.

Definition Long-term unemployment is defined as referring to people who have been unemployed for 12 months or more. Ratios are the proportion of these long-term unemployed among

Overview In 2014, more than one-third of the unemployed were long-term unemployed in the OECD area. The rates varied from 10% or less in Korea and Mexico, to 50% or more in Estonia, Ireland and Italy and more than twot h i rd s o f t h e u n e m p l oye d i n G re e c e a n d t h e Slovak Republic. For at least the last ten years, the share of long-term unemployed has remained stubbornly high in Germany despite a rising trend in employment rates since 2005. Over the period 2002-14, long-term unemployment rates increased by almost 8 percentage points for the OECD as a whole. Country patterns differ depending on how deeply national labour markets were affected by the global financial and the Euro area sovereign debt crisis. Since 2002, sharp rises, of 5 percentage points or more, were recorded in 14 countries, exceeding 10 percentage points in the Netherlands, Portugal, Spain, Switzerland, the United Kingdom and the United States, with a dramatic increase of more than 20 percentage points in Greece, Ireland and Portugal. Falls of over 5 per cent occurred in just four countries, with Poland recording the steepest fall of over 10 percentage points. More recently, long-term unemployment has actually increased since 2011 in a number of European countries, notably in Italy, Slovenia, Portugal and Greece. In Russia and South Africa, long-term unemployment d e c l i n e d m a r k e d l y s i n c e 2 0 0 2 by m o re t h a n 10 percentage points. In South Africa however, close to 58% of unemployed people were still long-term unemployed in 2014.

134

all unemployed, hereafter called long-term unemployment rates. Lower duration limits (e.g. six months or more) are sometimes considered in national statistics on the subject. Unemployment is defined in all OECD countries in accordance with the ILO Guidelines. Unemployment is usually measured by national labour force surveys and refer to persons who report that they have worked in gainful employment for less than one hour in the previous week, who are available for work and who have taken actions to seek employment in the previous four weeks. The ILO Guidelines specify the kinds of actions that count as seeking work.

Comparability All OECD countries use the ILO Guidelines for measuring unemployment. Operational definitions used in national labour force surveys may vary slightly across countries. Unemployment levels may also be affected by changes in the survey design and the survey conduct. Despite these caveats long-term unemployment rates are fairly consistent over time. In comparing rates of long-term unemployment, it is important to bear in mind differences in institutional arrangements between countries. Rates of long-term unemployment will generally be higher in countries where unemployment benefits are relatively generous and are available for long periods of unemployment. In countries where benefits are low and of limited duration, unemployed persons will more quickly lower their wage expectations or consider taking jobs that are in other ways less attractive than those which they formerly held.

Sources • OECD (2014), OECD Labour Force Statistics, OECD Publishing. • For non-member countries: National sources.

Further information Analytical publications • OECD (2015), OECD Employment Outlook, OECD Publishing.

Online databases • OECD Employment and Labour Market Statistics.

Websites • Employment policies and data, www.oecd.org/employment/ emp. • Labour statistics, www.oecd.org/employment/labour-stats. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • UNEMPLOYMENT LONG-TERM UNEMPLOYMENT

Long-term unemployment Persons unemployed for 12 months or more as a percentage of total unemployed Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

22.4 19.2 48.8 9.6 .. 50.7 19.1 54.8 24.4 32.7 47.8 51.1 44.8 11.1 30.1 13.5 59.6 30.8 2.5 27.4 0.9 26.5 14.8 6.4 48.4 34.5 59.8 55.6 33.4 20.9 21.8 29.4 21.7 8.5 43.1 27.3 .. .. .. .. 38.9 68.5

21.5 24.5 45.3 10.0 .. 49.9 20.4 46.9 24.7 39.3 50.0 54.7 42.2 8.1 32.8 18.0 58.1 33.5 0.6 24.7 0.9 27.7 13.6 6.4 49.7 35.0 61.2 52.8 33.5 17.8 26.1 24.4 21.4 11.8 42.9 28.5 .. .. .. .. 37.6 68.4

20.6 27.9 49.0 9.5 .. 51.8 21.5 51.1 23.4 40.6 51.8 52.9 45.1 11.2 34.9 24.2 49.0 33.7 1.1 21.0 1.1 34.2 11.7 9.2 47.9 44.4 60.6 51.4 31.9 18.9 33.5 39.2 20.5 12.7 41.8 29.4 .. .. .. .. 39.2 65.1

18.2 25.5 51.7 9.6 .. 53.6 23.4 54.2 24.9 41.1 53.0 51.9 46.1 13.3 33.4 25.3 49.8 33.3 0.8 26.4 2.1 40.2 9.8 9.5 52.2 48.3 68.1 47.3 24.4 .. 39.0 39.4 21.0 11.8 44.5 31.9 .. .. .. .. 39.0 63.7

18.1 28.0 51.2 8.7 .. 55.2 20.8 48.6 24.8 41.9 56.4 54.1 46.3 7.3 31.6 27.3 49.6 33.0 1.1 29.5 2.1 43.0 7.6 14.5 50.4 50.4 73.1 49.3 21.6 .. 39.1 35.7 22.3 10.0 44.5 31.3 .. .. .. .. 42.3 59.5

15.4 27.2 50.4 7.5 .. 53.4 16.1 49.8 23.0 40.2 56.6 49.7 47.5 8.0 30.0 24.9 47.5 32.0 0.6 28.7 2.3 39.4 6.0 8.8 45.9 47.2 70.8 45.7 20.4 12.8 40.8 30.3 23.7 10.0 41.6 28.5 .. .. .. .. 40.6 57.7

14.9 24.3 47.6 7.3 .. 50.2 13.5 31.2 18.2 37.4 52.5 47.1 47.3 4.1 26.5 22.7 45.7 33.3 2.7 32.4 1.4 34.4 4.3 6.0 29.0 47.4 66.0 42.2 18.0 12.1 34.3 26.9 24.1 10.6 36.2 24.9 .. .. .. .. 35.2 50.2

14.7 21.7 44.2 8.0 .. 31.2 9.5 27.3 16.6 35.2 45.5 40.4 42.4 6.9 29.1 20.3 44.6 28.5 0.5 23.1 1.7 24.8 6.4 7.7 25.2 44.2 50.9 30.1 23.8 12.8 30.1 25.3 24.5 16.3 32.6 23.6 .. .. .. .. 28.7 50.1

18.6 25.4 48.8 12.1 .. 43.3 20.2 45.3 23.6 40.2 47.4 44.6 50.3 21.3 49.1 22.4 48.5 37.6 0.3 29.3 2.0 27.6 8.9 9.5 25.5 52.2 59.3 43.3 36.6 17.3 33.1 28.6 32.6 29.0 39.1 31.5 .. .. .. .. 30.0 56.7

18.9 26.3 48.3 13.6 .. 41.6 24.4 57.3 22.6 41.5 47.9 49.3 48.8 27.8 59.3 20.2 52.0 39.4 0.4 28.8 1.9 33.6 8.9 11.6 31.6 48.4 64.0 44.2 41.6 18.2 38.8 26.5 33.5 31.3 42.0 33.5 .. .. .. .. 32.9 59.7

19.0 24.9 44.7 12.7 .. 43.4 28.0 54.7 21.7 40.4 45.4 59.1 46.6 27.9 61.7 13.3 53.2 38.5 0.3 30.3 1.8 33.7 13.3 8.7 34.8 48.8 63.7 47.9 44.4 17.5 35.3 24.9 34.7 29.3 43.6 34.1 .. .. .. .. 30.9 58.5

19.1 24.6 46.0 12.9 .. 44.9 25.5 44.5 21.2 40.4 44.7 67.1 49.8 21.9 60.6 12.7 56.9 41.2 0.4 30.4 1.4 35.9 12.2 9.2 36.5 56.4 66.6 51.0 49.7 17.0 33.2 24.4 36.2 25.9 46.4 35.1 .. .. .. .. 31.0 57.8

21.8 27.2 49.9 12.9 .. 44.5 25.2 45.3 23.1 42.7 44.3 73.5 48.9 13.6 59.2 10.6 61.4 37.6 .. 27.4 1.2 40.2 13.6 11.8 36.2 59.6 66.8 54.5 52.8 16.8 37.7 20.6 35.7 23.0 48.6 35.2 .. .. .. .. 28.1 57.8

1 2 http://dx.doi.org/10.1787/888933336367

Long-term unemployment Persons unemployed for 12 months or more as a percentage of total unemployed 2014 or latest available year

2002

70 60 50 40 30 20 10 0

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LABOUR • UNEMPLOYMENT

UNEMPLOYMENT BY REGION The unemployment rate is an important indicator of economic and social well-being. Breakdowns by region show that large international differences hide even larger differences among regions within each country.

Definition Unemployed persons are defined as those who are without work, who are available for work and have taken active steps to find work in the last four weeks. The unemployment rate is defined as the ratio between unemployed persons and the labour force, where the latter is composed of unemployed and employed persons. The long-term unemployment rate is defined as the ratio of those unemployed for 12 months or more out of the total labour force. The incident of long-term unemployment is defined as the ratio of the long-term unemployed out of the total unemployed. The youth unemployment rate is defined as the ratio between the unemployed persons aged between 15 and 24 and the labour force in the same age class. The Gini index is a measure of inequality among all regions of a given country. The index takes on values between 0 and 1, with zero interpreted as no disparity. It assigns equal weight to each region regardless of its size; therefore differences in the values of the index among countries may be partially due to differences in the average size of regions.

Comparability Comparability of regional statistics is affected by differences in the meaning of the word “region”. This results in significant differences in terms of geographic area and population both within and among countries. To address this issue, the OECD has classified regions within each country based on two levels: territorial level 2 (TL2, large regions) and territorial level 3 (TL3, small regions). Labour market data for Canada refers to a different regional grouping, labelled non-official grids (NOG), which is comparable to the small regions. For Brazil, China, India, Russia and South Africa only large regions have been defined. Data on unemployment, youth and long-term unemployment refer to large (TL2) regions. Data on unemployment refer to period 2007-14 for all countries. Data on youth unemployment rate refer to 2014, except 2013 for Israel. New Zealand is not included due to lack of data on comparable years. No regional data for Iceland and Korea exist. Data on the long-term unemployment refer to 2014 for all countries. Austria and New Zealand are not included due to lack of data on comparable years. No regional data for Iceland, Japan, Korea, Mexico and the United States exist.

While in the study of income inequality individuals are the obvious unit of analysis, there is no such straightforward parallel in regional economics. The size of regions varies significantly both within and between countries so that the degree of geographic concentration and territorial disparity depends on the very definition of a region. Typically, as the size of a region increases, territorial differences tend to be averaged out and disparities to decrease.

Overview

Sources

Regional disparities in unemployment have decreased mainly in countries (as measured by the Gini index) where the economic downturn has affected all regions evenly, such as Portugal, Greece, Spain, and Italy.

• OECD (2013), OECD Regions at a Glance, OECD Publishing.

Youth unemployment is of particular concern in Spain, Italy, Greece, Portugal and Poland where regional differences are high and some regions display a youth unemployment rate above 40%. Long-term unemployment rates also show large regional variations not only in dual economies such as Italy, but also in Spain, the United States, the Slovak Republic and the United Kingdom.

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Further information Analytical publications • OECD (2014), OECD Regional Outlook, OECD Publishing. • OECD (2012), Promoting Growth in All Regions, OECD Publishing.

Online databases • OECD Regional Database.

Websites • Regional Statistics and Indicators, www.oecd.org/regional/ regional-policy/regionalstatisticsandindicators.htm. • Regions at a Glance Interactive, http://rag.oecd.org. OECD FACTBOOK 2015-2016 © OECD 2016

LABOUR • UNEMPLOYMENT UNEMPLOYMENT BY REGION

Gini index of regional unemployment rates 2014

2007

0.4

0.3

0.2

0.1

0

1 2 http://dx.doi.org/10.1787/888933335441

Regional variation of the youth unemployment rate Percentage, 2014

Maximum

Minimum

40 35 30 25 20 15 10 5 0

1 2 http://dx.doi.org/10.1787/888933335862

Regional variation in incidence of long-term unemployment Ratio, 2014

Maximum

Minimum

90 80 70 60 50 40 30 20 10 0

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ENVIRONMENT AND SCIENCE WATER AND WASTE ABSTRACTIONS OF FRESHWATER MUNICIPAL WASTE

AIR AND CLIMATE EMISSIONS OF CARBON DIOXIDE SULPHUR AND NITROGEN EMISSIONS GREENHOUSE GAS EMISSIONS REGIONAL QUALITY OF AIR

RESEARCH AND DEVELOPMENT EXPENDITURE ON R&D RESEARCHERS PATENTS

ENVIRONMENT AND SCIENCE • WATER AND WASTE

ABSTRACTIONS OF FRESHWATER Water and waste

Freshwater resources are of major environmental, economic and social importance. Their distribution varies widely among and within countries. If a significant share of a country’s water comes from transboundary rivers, tensions between countries can arise. In arid regions, freshwater resources may at times be limited to the extent that demand for water can be met only by going beyond sustainable use. Freshwater abstractions, particularly for public water supply, irrigation, industrial processes and cooling of electric power plants, exert a major pressure on water resources, with significant implications for their quantity and quality. Main concerns relate to overexploitation and inefficient use of water and to their environmental and socio-economic consequences.

Definition Water abstractions refer to freshwater taken from ground or surface water sources, either permanently or temporarily, and conveyed to the place of use. If the water is returned to a surface water source, abstraction of the same water by the downstream user is counted again in compiling total abstractions: this may lead to double counting.

Mine water and drainage water are included, whereas water used for hydroelectricity generation (which is considered an in situ use) is normally excluded. Data are for gross abstractions of freshwater taken from ground or surface waters and per capita

Comparability Information on the use of water resources can be derived from water resource account. It is available for most OECD countries, but often incomplete. The definitions and estimation methods employed may vary considerably from country to country and over time. In general, data availability and quality are best for water abstractions for public supply. For some countries the data refer to water permits and not to actual abstractions. OECD totals are estimates based on linear interpolations to fill missing values, and exclude Chile. Data for the United Kingdom refer to England and Wales only.

Overview Over the last century, the estimated growth in global water demand was more than double the rate of population growth, with agriculture being the largest user of water. In the 1980s, some countries stabilised their abstractions through more efficient irrigation techniques, the decline of water-intensive industries, increased use of more efficient technologies and reduced losses in pipe networks. Since the mid-1990s, OECD-wide trends in water abstractions have been generally stable. In some countries this is due to increased use of alternative water sources, including water reuse and desalination. The use of irrigation water in the OECD area declined slightly compared to agricultural production, but in about half of the countries it increased driven by expansion in the irrigated area. In semi-arid areas in North America and the Mediterranean region, groundwater sustains an increasing share of irrigation. Water stress levels vary greatly among and within countries. Most face seasonal or local water quantity problems, and several have extensive arid or semi-arid regions where water availability is a constraint on economic development. In more than one-third of OECD countries, freshwater resources are under medium to high stress. In a few countries water resources are abundant and population density is low.

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Sources • OECD (2016), “Water”, OECD Environment Statistics (database). • OECD (2015), Environment at a Glance, OECD Publishing.

Further information Analytical publications • Love, P. (2013), Water, OECD Insights, OECD Publishing. • OECD (2015), Water Resources Allocation: Sharing Risks and Opportunities, OECD Publishing. • OECD (2015), OECD Studies on Water, OECD Publishing. • OECD (2012), OECD Environmental Outlook, OECD Publishing. • OECD (2009), Managing Water for All: An OECD Perspective on Pricing and Financing, OECD Studies on Water, OECD Publishing. • United Nations WWAP (World Water Assessment Programme) (2015), The United Nations World Water Development Report 2015: Water for a Sustainable World, Paris, UNESCO.

Websites • Environmental indicators, modelling and outlooks, www.oecd.org/env/indicators-modelling-outlooks. • The water challenge: OECD’s response, www.oecd.org/ water. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • WATER AND WASTE ABSTRACTIONS OF FRESHWATER

Water abstractions Total abstractions millions m3

Water abstractions per capita m3 per capita

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

1985

1990

1995

2000

2005

2013 or latest available year

925 473 .. .. .. 356 333 .. 816 631 .. 553 588 464 .. .. .. 720 455 183 .. .. .. 488 441 200 399 .. 1 204 356 409 387 .. 1 953 .. 988 .. .. .. .. .. ..

.. 496 .. .. .. 350 245 2 049 471 665 .. 774 607 655 .. 382 .. 719 480 .. .. .. .. .. 399 .. 399 .. .. 347 397 500 .. 1 852 .. 949 .. .. .. .. .. ..

1 337 434 814 1 612 .. 266 169 1 239 506 .. 531 731 579 617 .. 327 .. 708 525 138 780 .. .. .. 338 .. 258 .. 845 309 365 542 .. 1 750 .. 928 .. .. .. .. .. ..

.. .. 735 .. .. 187 136 1 066 .. 554 .. 909 648 580 .. 275 .. 685 .. .. 698 .. .. .. 314 .. 217 .. 907 303 357 648 .. 1 710 .. 901 .. .. .. .. .. ..

958 .. 610 1 301 .. 190 119 1 168 .. 554 .. 870 489 558 193 249 .. 653 607 .. 714 707 .. 619 302 .. 169 461 876 291 337 620 174 1 634 .. 872 305 426 .. .. 518 ..

629 .. 572 1 025 .. 157 117 1 227 .. 472 404 .. 509 .. 167 176 .. 639 .. 80 690 640 1 191 .. 295 .. 118 554 809 287 249 642 129 1 583 .. 860 424 442 .. .. 463 ..

1985

1990

1995

2000

2005

14 600 3 580 .. .. .. 3 679 1 705 .. 4 000 34 887 .. 5 496 6 267 112 .. .. .. 87 209 18 580 67 .. .. .. 2 025 16 408 2 003 2 061 .. 46 250 2 970 2 646 19 400 .. 464 737 .. .. .. .. .. .. .. ..

.. 3 807 .. .. .. 3 623 1 261 3 215 2 347 37 687 .. 7 862 6 293 167 .. 1 780 .. 88 906 20 570 .. .. .. .. .. 15 164 .. 2 116 .. .. 2 968 2 665 28 073 .. 462 250 .. .. .. .. .. .. .. ..

24 071 3 449 8 248 47 250 .. 2 743 887 1 780 2 586 .. 43 374 7 770 5 976 165 .. 1 812 .. 88 881 23 670 57 73 672 .. .. .. 12 924 .. 1 386 .. 33 288 2 725 2 571 33 482 .. 466 118 .. .. .. .. .. .. .. ..

.. .. 7 536 .. .. 1 918 726 1 471 .. 32 715 .. 9 924 6 621 163 .. 1 727 .. 86 972 .. .. 70 428 .. .. .. 11 994 .. 1 171 .. 36 525 2 688 2 564 43 650 .. 482 558 .. .. .. .. .. .. .. ..

19 336 .. 6 389 41 955 .. 1 949 644 1 578 .. 33 872 .. 9 654 4 929 165 799 1 728 .. 83 427 29 198 .. 76 508 11 546 .. 2 864 11 521 .. 907 923 38 029 2 631 2 507 44 684 10 324 482 972 .. .. 56 019 561 100 .. .. 74 366 ..

2013 or latest available year 14 060 .. 6 176 35 351 .. 1 650 652 1 631 .. 30 006 33 036 .. 5 051 .. 757 1 340 .. 81 454 .. 43 81 651 10 724 5 201 .. 11 242 .. 637 1 156 37 349 2 690 1 983 46 956 8 214 489 528 .. .. 83 300 608 660 .. .. 66 296 ..

1 2 http://dx.doi.org/10.1787/888933336789

Water abstractions m³/capita, 2013 or latest available year 1 800 1 600 1 400 1 200 1 000 800 600 400 200 0

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ENVIRONMENT AND SCIENCE • WATER AND WASTE

MUNICIPAL WASTE The amount of municipal waste generated in a country is related to the rate of urbanisation, the types and patterns of consumption, household revenue and lifestyles. While municipal waste is only one part of total waste generated in each country, its management and treatment often absorbs more than one third of the public sector’s financial efforts to abate and control pollution. The main concerns raised by municipal waste are the potential impacts from inappropriate waste management on human health and the environment (soil and water contamination, air quality, land use and landscape).

Definition Municipal waste is waste collected by or on behalf of municipalities. It includes household waste originating from households (i.e. waste generated by the domestic activity of households) and similar waste from small commercial activities, office buildings, institutions such as schools and government buildings, and small businesses that treat or dispose of waste at the same facilities used for municipally collected waste. The kilogrammes of municipal waste per capita produced each year – or “waste generation intensities” – provide one broad indicator of the potential environmental and health pressures from municipal waste. They should be complemented with information on waste management practices and costs, and on consumption levels and patterns.

Comparability The definition of municipal waste, the type of waste covered and the surveying methods used to collect information vary from country to country and over time. Breaks in time series exist for: Denmark, Estonia, Greece,

Overview During the 1990s, municipal waste generated in the OECD area has risen (19%), mostly in line with private consumption expenditure and GDP. As of the early 2000s, this rise has been slowing down. Today, the quantity of municipal waste generated exceeds an estimated 650 million tonnes (522 kg per capita). The amount and composition of municipal waste vary widely among OECD countries, being related to levels and patterns of consumption, the rate of urbanisation, lifestyles, and national waste management practices. More and more waste is being diverted from landfills and incinerators and fed back into the economy through recycling. Landfill nonetheless remains the major disposal method in many OECD countries.

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Hungary, Ireland, Italy, Korea, Luxembourg, Mexico, Norway, Poland, the Slovak Republic, Slovenia and Turkey. The main problems in terms of data comparability relate to the coverage of household like waste from commerce and trade, and of separate waste collections that may include hazardous waste from households such as waste batteries or waste electric and electronic equipment (WEEE) and waste collected by the private sector in the framework of extended producer responsibility schemes. In some cases the reference year refers to the closest available year. Data for Estonia exclude packaging waste separately collected for recycling and thus under-estimate the amount of municipal waste generated.

Sources • OECD (2015), Environment at a Glance: OECD Indicators, OECD Publishing. • OECD (2015), “Municipal Waste”, OECD Environment Statistics (Database).

Further information Analytical publications • OECD (2015), Material Resources, Productivity and the Environment, OECD Green Growth Studies, OECD Publishing. • OECD (2013), Greening Household Behaviour: Overview from the 2011 Survey, OECD Studies on Environmental Policy and Household Behaviour, OECD Publishing. • OECD (2012), Sustainable Materials Management: Making Better Use of Resources, OECD Publishing. • OECD (2004), Addressing the Economics of Waste, OECD Publishing.

Methodological publications • OECD (2009), Guidance Manual for the Control of Transboundary Movements of Recoverable Wastes, OECD Publishing. • OECD (2008), Guidance Manual on Environmentally Sound Management of Waste, OECD Publishing.

Websites • Resource productivity and waste, www.oecd.org/ environment/waste. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • WATER AND WASTE MUNICIPAL WASTE

Municipal waste generation Generation intensities kg per capita

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Total amount generated thousand tonnes

1980

1985

1990

1995

2000

2005

2013 or latest available year

680 .. 280 .. 204 .. 399 .. .. .. .. 259 .. .. 188 .. 249 375 .. 352 .. .. .. 547 283 203 .. .. .. 302 448 270 .. 605 .. .. .. .. .. .. .. ..

.. .. 310 .. 225 .. 475 .. .. .. .. 302 .. .. .. .. 265 348 514 357 .. 478 .. 592 298 .. .. .. .. 317 527 359 .. 634 .. .. .. .. .. .. 294 ..

.. 417 345 .. 249 .. .. .. .. .. 628 295 530 .. .. .. 353 407 715 585 .. 497 .. 555 292 301 .. .. .. 374 611 .. 473 757 .. 502 .. .. .. .. .. ..

.. 437 455 .. 282 302 521 371 413 476 623 301 460 426 513 .. 454 416 387 587 323 539 .. 637 287 387 302 596 476 386 602 441 498 740 .. 521 .. .. .. .. .. ..

694 539 476 .. 329 334 610 459 502 514 642 407 446 462 601 631 509 432 361 654 305 598 .. 620 320 440 317 513 614 428 659 454 577 783 .. 554 336 .. .. .. 354 ..

.. 575 483 .. 353 289 662 435 477 530 565 437 461 517 736 590 540 413 367 678 330 599 .. 430 319 452 273 494 592 477 664 435 591 779 .. 554 328 .. .. .. 402 ..

647 580 438 .. 385 307 751 293 493 530 614 504 378 347 587 607 484 354 358 661 360 525 .. 501 297 429 304 409 455 458 712 407 494 725 .. 522 295 .. .. .. 563 ..

2013 or latest available year 14 035 4 883 4 905 .. 6 517 3 228 4 192 386 2 682 34 828 49 780 5 585 3 738 112 2 693 4 894 29 595 45 359 17 881 355 42 103 8 845 .. 2 518 11 295 4 598 1 645 853 20 931 4 399 5 708 30 920 30 890 227 604 .. 656 169 57 900 .. .. .. 80 564 ..

1 2 http://dx.doi.org/10.1787/888933336776

Municipal waste generation kg per capita, 2013 or latest available year 800 700 600 500 400 300 200 100 0

1 2 http://dx.doi.org/10.1787/888933335704

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ENVIRONMENT AND SCIENCE • AIR AND CLIMATE

EMISSIONS OF CARBON DIOXIDE Air and climate

Carbon dioxide (CO2) makes up the largest share of manmade greenhouse gases. The addition of man-made greenhouse gases to the atmosphere disturbs the earth’s radiative balance (i.e. the balance between the solar energy that the earth absorbs and radiates back into space). This is leading to an increase in the earth’s surface temperature and to related effects on climate, sea level and world agriculture.

Definition Emissions refer to CO2 from burning oil, coal, natural gas and waste materials for energy use. Carbon dioxide also enters the atmosphere from deforestation and from some industrial processes such as cement production. However,

Overview Global emissions of carbon dioxide have more than doubled since 1971, increasing on average 2% per year. In 1971, the current OECD countries were responsible for 67% of world CO2 emissions. As a consequence of rapidly rising emissions in the developing world, the OECD contribution to the total fell to 37% in 2013. By far, the largest increase in non-OECD countries occurred in Asia, where China’s emissions of CO 2 from fuel combustion have risen, on average, by 6% per annum between 1971 and 2013. Driven primarily by increased use of coal, CO2 emissions from fuel combustion in China increased over tenfold between 1971 and 2013. Two significant downturns in OECD CO2 emissions occurred following the oil shocks of the mid-1970s and early 1980s. Emissions from the economies in transition declined in the 1990s, helping to offset the OECD increases between 1990 and the present. However, this decline did not stabilise global emissions as emissions in developing countries continued to grow. With the economic crisis in 2008/2009, world CO2 emissions declined by 2% in 2009. However, growth in CO 2 emissions have rebounded, with emissions increasing by 1% in 2012 and 2% in 2013. Disaggregating the emissions estimates shows substantial variations within individual sectors. Between 1971 and 2013, the combined share of electricity and heat generation and transport shifted from one-half to two-thirds of the total. The share of the respective fuels in overall emissions also changed significantly during the period. The share of oil decreased from 48% to 34%, while the share of natural gas increased from 15% to 20% and that of coal in global emissions increased from 38% to 46%. Fuel switching, including the penetration of nuclear, and the increasing use of other non-fossil energy sources only reduced the CO2/total primary energy supply ratio by 6% over the past 40 years.

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emissions of CO2 from these other sources represent a smaller share of global emissions, and are not included. The 2006 IPCC Guidelines for National Greenhouse Gas Inventories provide a fuller, technical definition of how CO2 emissions have been estimated.

Comparability These emissions estimates are affected by the quality of the underlying energy data. For example, some countries, both OECD and non-OECD members, have trouble reporting information on bunker fuels and may not be able to accurately split fuel consumption between domestic and international transport. Since emissions from bunkers are excluded from the national totals, this affects the comparability of the estimates across countries. On the other hand, since these estimates have been made using the same method and emission factors for all countries, in general, the comparability across countries is quite good.

Sources • International Energy Agency (2015), CO2 Emissions from Fuel Combustion, IEA, Paris.

Further information Analytical publications • IEA (2015), Energy Technology Perspectives, IEA, Paris. • IEA (2015), World Energy Outlook, IEA, Paris. • IEA (2014), Energy, Climate Change and Environment: 2014 Insights, IEA, Paris. • IEA (2013), Electricity and a Climate-Constrained World: Data and Analyses, IEA, Paris. • OECD (2013), Aligning Policies for a Low-Carbon Economy, OECD Publishing. • OECD (2013), Effective Carbon Prices, OECD Publishing. • OECD (2013), Inventory of Estimated Budgetary Support and Tax Expenditures for Fossil Fuels 2013, OECD Publishing. • OECD (2013), Taxing Energy Use, A Graphical Analysis, OECD Publishing.

Methodological publications • Intergovernmental Panel on Climate Change (IPCC) (2006), 2006 IPCC Guidelines for National Greenhouse Gas Inventories, prepared by the National Greenhouse Gas Inventories Programme, Eggleston H.S., Buendia L., Miwa K., Ngara T. and Tanabe K. (eds), IGES, Japan.

Online databases • IEA CO2 Emissions from Fuel Combustion Statistics. • OECD Environment Statistics. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • AIR AND CLIMATE EMISSIONS OF CARBON DIOXIDE

CO2 emissions from fuel combustion Million tonnes Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

1971

1990

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

143 49 118 340 21 154 55 .. 40 423 978 25 60 1 22 14 289 751 53 16 94 128 14 23 287 14 39 .. 119 82 39 42 621 4 288 .. 9 342 87 831 182 25 .. 157 13 995

260 56 106 419 29 150 51 36 54 346 940 70 66 2 30 33 389 1 049 232 11 260 145 22 27 345 38 55 14 203 52 41 127 548 4 802 4 024 11 006 184 2 184 534 134 2 163 244 20 623

354 73 112 534 49 121 57 17 71 368 821 94 57 2 42 61 445 1 188 438 10 358 167 33 35 293 57 37 15 303 54 43 203 532 5 609 3 939 12 653 292 4 117 954 312 1 494 348 24 992

367 74 111 526 53 122 52 17 67 369 805 94 55 2 42 61 455 1 189 460 11 364 169 32 36 297 58 36 15 319 52 43 207 533 5 688 3 940 12 781 310 4 788 1 034 319 1 488 375 26 177

371 75 107 536 54 118 48 17 55 370 787 95 55 2 44 59 456 1 196 458 11 382 163 34 35 296 61 37 15 334 49 44 216 531 5 702 3 916 12 816 311 5 360 1 086 322 1 482 372 27 048

376 73 104 524 56 119 56 16 66 361 799 94 54 2 45 62 449 1 183 465 11 391 161 34 36 308 56 36 16 325 47 43 240 533 5 602 3 922 12 742 314 5 881 1 157 343 1 537 374 27 856

386 70 100 554 63 121 52 19 64 353 767 98 53 2 44 64 441 1 221 477 11 405 162 33 36 307 55 36 16 338 45 41 265 521 5 686 3 868 12 907 330 6 276 1 266 358 1 533 391 28 783

389 71 104 539 67 116 49 18 56 349 775 94 52 2 44 64 429 1 137 489 11 399 164 33 35 302 53 35 17 310 43 43 265 508 5 512 3 790 12 573 348 6 338 1 342 355 1 554 423 28 871

394 65 93 504 64 109 47 15 53 333 720 90 47 2 39 64 384 1 076 502 10 396 158 30 36 291 53 33 15 276 41 42 257 459 5 120 3 499 11 819 324 6 618 1 513 370 1 440 399 28 322

385 70 102 515 69 111 47 19 62 340 759 83 48 2 39 68 392 1 126 551 11 414 168 30 38 310 48 35 15 262 46 43 265 477 5 355 3 611 12 306 370 7 095 1 597 383 1 529 409 29 838

385 68 94 524 75 110 42 18 54 310 731 82 46 2 35 68 384 1 178 574 11 428 157 30 36 303 47 33 15 265 42 39 285 439 5 219 3 465 12 132 390 8 420 1 660 390 1 604 395 31 293

387 65 89 524 77 106 37 16 49 312 745 77 42 2 36 75 367 1 217 575 10 434 157 31 36 297 46 31 15 260 39 40 303 462 5 032 3 425 11 990 422 8 519 1 780 416 1 551 408 31 491

389 65 89 536 82 101 39 19 49 316 760 69 40 2 34 68 338 1 235 572 10 452 156 31 35 292 45 32 14 236 38 42 284 449 5 120 3 340 12 038 452 8 977 1 869 425 1 543 420 32 190

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World CO2 emissions from fuel combustion, by region Million tonnes OECD Total OECD total Middle East

Middle East

Non-OECD Americas World marine bunkers

China Non-OECD Europe and Eurasia Non-OECD Americas AfricaWorld aviation bunkers

Non-OECD Europe and Eurasia Other Asia Africa Bunkers Asia excluding China

China

35 000 30 000 25 000 20 000 15 000 10 000 5 000 0

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ENVIRONMENT AND SCIENCE • AIR AND CLIMATE

SULPHUR AND NITROGEN EMISSIONS Atmospheric pollutants from energy transformation and energy consumption, but also from industrial processes, are the main contributors to regional and local air pollution and raise concerns as to their effects on human health and ecosystems.

The high emission levels of SOX for Iceland are due to SOX emissions from geothermal energy which represented 80% of total emissions in 2012. OECD totals do not include Chile and Mexico.

In the atmosphere, emissions of sulphur and nitrogen compounds are transformed into acidifying substances. When these substances reach the ground, acidification of soil, water and buildings arises. Soil acidification is one important factor causing forest damage; acidification of the aquatic environment may severely impair the life of plant and animal species. Nitrogen oxides (NO X ) also contribute to ground-level ozone formation and are responsible for eutrophication, reduction in water quality and species richness. High concentrations of NOX cause respiratory illnesses.

Definition Total emissions refer to emissions from human activities of sulphur oxides (SOX) and nitrogen oxides (NOX). It should be kept in mind that SOX and NOX emissions provide only a partial view of air pollution problems. They should be supplemented with information on the acidity of rain and snow, and the exceedance of critical loads in soil and water, which reflect the actual acidification of the environment, and with information on population exposure to air pollutants.

Comparability International data on SOX and NOX emissions are available for almost all OECD countries. The details of estimation methods for emissions such as emission factors and reliability, extent of sources and pollutants included in estimation, etc., may differ from one country to another.

Overview SOX emissions have continued to decrease since 2000 for the OECD as a whole as a combined result of changes in energy demand through energy savings and fuel substitution, pollution control policies and technical progress. NOX emissions have continued to decrease in the OECD overall since 2000, but less than SOX emissions. This is mainly due to changes in energy demand, pollution control policies and technical progress. In the late 2000s, the slowdown in economic activity following the 2008 economic crisis further contributed to reduce e m i s s i o n s . H owev e r, t h e s e r e s u l t s h av e n o t compensated in all countries for steady growth in road traffic, fossil fuel use and other activities generating NOX.

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Sources • OECD (2014), “Air emissions by source”, OECD Environment Statistics (database). • OECD (2015), Environment at a Glance, OECD Publishing. • United Nations Framework Convention on Climate Change (UNFCCC), “National Inventory Submissions”, National Reports.

Further information Analytical publications • OECD (2014), The Cost of Air Pollution: Health Impacts of Road Transport, OECD Publishing. • OECD (2012), “Review of the Implementation of the OECD Environmental Strategy for the First Decade of the 21st Century”, OECD, Paris.

Online databases • OECD Environment Statistics.

Websites • Environmental indicators, modelling and outlooks, www.oecd.org/environment/indicators-modelling-outlooks. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • AIR AND CLIMATE SULPHUR AND NITROGEN EMISSIONS

Sulphur and nitrogen oxides emissions Thousand tonnes Sulphur oxides

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Nitrogen oxides

2007

2008

2009

2010

2011

2012

2007

2008

2009

2010

2011

2012

2 440.2 24.7 123.8 1 968.2 .. 216.5 25.5 88.0 82.0 424.2 453.9 537.9 36.4 58.0 54.5 198.9 339.8 1 031.8 402.5 2.4 .. 59.3 82.2 20.1 1 229.2 162.9 70.6 14.6 1 135.9 32.4 13.2 2 646.2 588.0 10 562.9 .. 25 126.7 .. .. .. .. 4 709.0 ..

2 618.1 22.4 96.1 1 789.9 .. 174.3 20.0 69.4 68.3 359.3 454.2 445.2 36.6 74.2 45.2 183.8 284.6 990.0 418.0 2.2 2 241.2 50.0 86.4 20.0 1 007.3 114.1 69.4 12.8 512.8 30.2 13.7 2 560.2 490.3 9 302.1 .. 22 421.3 .. .. .. .. 4 675.0 ..

2 594.6 17.0 74.5 1 538.3 .. 173.5 14.9 54.8 58.7 311.2 406.6 425.6 30.9 68.7 32.4 167.8 232.8 957.0 387.7 2.2 .. 36.7 74.3 15.4 868.2 79.0 64.1 10.5 459.9 29.5 11.8 2 663.8 397.3 8 223.8 .. 20 483.5 .. .. .. .. 4 512.0 ..

2 381.0 18.6 59.9 1 375.2 .. 170.3 14.9 83.2 66.6 287.8 430.4 265.4 32.3 73.4 26.3 164.0 214.2 951.2 401.7 2.2 .. 33.5 73.5 19.5 935.6 70.2 69.4 9.8 424.9 32.0 12.5 2 558.8 415.0 7 016.9 .. 18 690.4 .. .. .. .. 4 512.0 ..

2 356.4 18.0 52.7 1 286.9 .. 169.0 14.0 72.7 60.7 246.3 423.8 262.2 35.3 80.2 24.7 174.2 193.9 942.2 434.0 1.7 .. 33.5 74.2 18.4 897.5 64.5 68.5 10.9 459.5 29.2 10.6 2 652.7 385.4 5 853.1 .. 17 406.8 .. .. .. .. 4 462.0 ..

2 333.9 17.2 48.0 1 287.7 .. 157.9 12.5 40.6 52.0 232.4 427.1 244.9 31.8 83.9 23.2 .. 177.7 936.8 .. 2.0 .. 33.8 78.2 16.7 853.3 59.2 58.5 10.2 407.9 27.8 10.8 2 739.1 426.4 4 694.5 .. 16 052.8 .. .. .. .. 4 431.0 ..

1 659.9 217.4 261.2 2 273.4 .. 283.2 172.0 38.5 182.7 1 269.4 1 476.7 414.1 163.0 26.3 120.9 201.4 1 112.5 1 957.3 1 187.8 51.6 .. 287.9 160.5 201.6 860.3 241.6 95.6 49.3 1 368.7 164.4 84.7 1 038.6 1 467.7 16 334.5 .. 35 424.5 .. .. .. .. 3 764.0 ..

1 667.9 204.8 230.5 2 183.9 .. 261.1 154.3 35.7 167.7 1 168.3 1 402.1 392.2 160.2 24.4 108.8 196.3 1 042.0 1 870.4 1 044.9 49.7 3 206.9 279.0 161.9 190.4 829.9 215.6 93.6 54.1 1 179.5 155.9 81.6 989.5 1 317.6 15 252.7 .. 33 166.3 .. .. .. .. 3 809.0 ..

1 657.8 189.0 204.9 2 075.9 .. 251.4 136.1 30.2 153.5 1 086.5 1 303.3 379.5 153.6 24.8 87.0 183.9 970.3 1 778.3 1 014.1 43.3 .. 254.7 151.8 179.8 809.4 204.4 84.2 46.9 1 043.9 147.1 76.8 967.5 1 147.0 14 316.1 .. 31 152.8 .. .. .. .. 3 669.0 ..

1 669.8 193.1 212.2 2 061.7 .. 239.1 131.8 36.7 165.5 1 065.9 1 324.9 319.4 151.5 22.4 80.1 186.1 951.6 1 730.2 1 061.1 45.6 .. 253.5 150.6 182.0 862.1 189.1 88.6 46.1 965.7 148.7 75.3 938.1 1 113.1 13 497.2 .. 30 158.8 .. .. .. .. 3 735.0 ..

1 678.0 182.5 198.2 1 964.2 .. 225.9 124.6 35.8 155.2 999.7 1 289.1 296.0 137.3 20.9 71.8 182.0 927.8 1 675.2 1 040.0 47.6 .. 237.7 152.8 174.2 845.9 179.0 85.2 46.2 958.9 139.5 70.5 1 115.7 1 040.4 13 045.1 .. 29 342.9 .. .. .. .. 3 649.0 ..

1 706.7 178.3 189.7 1 861.7 .. 210.6 115.4 32.3 145.6 981.5 1 269.3 258.6 122.4 20.5 73.8 .. 849.2 1 626.9 .. 45.4 .. 227.3 157.9 166.2 817.3 170.1 81.0 45.1 928.0 131.8 69.3 1 087.7 1 057.0 12 257.9 .. 28 108.0 .. .. .. .. 3 452.0 ..

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Sulphur and nitrogen oxides emissions Kilograms per capita, 2012 or latest available year Nitrogen 110

Sulphur 262

100 90 80 70 60 50 40 30 20 10 0

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ENVIRONMENT AND SCIENCE • AIR AND CLIMATE

GREENHOUSE GAS EMISSIONS Emissions of greenhouses gases (GHG) from human activities disturb the radiative energy balance of the earth's atmosphere system. They exacerbate the natural greenhouse effect, leading to temperature changes and other consequences for the earth’s climate.

Luxembourg result from the lower taxation of road fuels compared to neighbouring countries, which attracts drivers to refuel in the country. The OECD total does not include Israel.

Climate change is of concern mainly as regards its impact on ecosystems (biodiversity), human settlements and agriculture, and on the frequency and scale of extreme weather events. It could have significant consequences for human well-being and socio-economic activities.

Definition Emissions refer to the sum of six GHGs that have direct effects on climate change and are considered responsible for a major part of global warming: carbon dioxide (CO2), methane (CH4), nitrous oxide (N2O), chlorofluorocarbons (CFCs), hydrofluorocarbons (HFCs), perfluorocarbons (PFCs) and sulphur hexafluoride (SF6). They show total gross emissions expressed in CO 2 equivalents as well as emission intensities per capita. They refer to GHG emitted within the national territory; CO2 emissions and removals from land use change and forestry are excluded as are international transactions of emission reduction units or certified emission reductions.

Sources Comparability Data on GHG emissions are reported annually to the Secretariat of the United Nations Framework Convention on Climate Change (UNCCC) with 1990 as a base year but not by all OECD countries. They display a good level of comparability. The high per capita emissions of

• OECD (2015), Environment at a Glance, OECD Publishing. • OECD (2014), “Greenhouse gas emissions by source”, OECD Environment Statistics (Database). • United Nations Framework Convention on Climate Change (UNFCCC) (2013), Greenhouse Gas Inventory Data (Database).

Further information Analytical publications

Overview Emissions of greenhouse gas emissions have been declining in recent years in almost all OECD countries. They fell by almost 5% since 2008 in the OECD area. This is partly due to a slowdown in economic activity following the 2008 economic crisis, but also to a strengthening of climate policies and changing patterns of energy consumption. CO 2 remains predominant and determines the overall trend. Together with CH4 and N2O, it accounts for about 98% of GHG emissions. The other gases account for about 2%, but their emissions are growing. Individual OECD countries’ contributions to the additional greenhouse effect, and their rates of progress, vary significantly. These differences partly reflect different national circumstances, such as composition and rate of economic growth, population growth, energy resource endowment, and the extent to which the countries have taken steps to reduce emissions from various sources.

• OECD (2015), Aligning Policies for a Low-Carbon Economy, OECD Publishing. • OECD (2015), The Economic Consequences of Climate Change, OECD Publishing. • OECD (2012), “Review of the Implementation of the OECD Environmental Strategy for the First Decade of the 21st Century”, OECD, Paris.

Statistical publications • International Energy Agency (IEA) (2015), CO2 Emissions from Fuel Combustion: Highlights 2015, OECD Publishing.

Methodological publications • Intergovernmental Panel on Climate Change (IPCC) (2006), 2006 IPCC Guidelines for National Greenhouse Gas Inventories, prepared by the National Greenhouse Gas Inventories Programme, Eggleston H.S., Buendia L., Miwa K., Ngara T. and Tanabe K. (eds), IGES, Hayama, Japan.

Online databases • CO2 Emissions from Fuel Combustion.

Websites • Climate change, www.oecd.org/environment/cc.

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ENVIRONMENT AND SCIENCE • AIR AND CLIMATE GREENHOUSE GAS EMISSIONS

Greenhouse gas emissions Thousand tonnes CO2 equivalent 1990 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

414 974 78 086 142 952 590 908 49 897 196 146 70 020 40 615 70 329 560 384 1 248 049 104 927 97 603 3 538 55 246 .. 519 055 1 234 320 295 683 12 901 458 754 211 850 60 641 50 409 466 372 60 767 73 227 18 444 283 749 72 714 52 890 188 434 778 805 6 219 524 .. 14 756 908 573 079 .. .. 266 818 3 363 342 347 349

1995 436 864 79 744 150 327 639 072 59 286 151 774 77 280 20 064 70 768 556 875 1 117 580 109 718 78 475 3 315 58 903 .. 530 333 1 335 888 442 840 10 177 487 432 223 161 64 465 50 242 441 103 71 399 53 232 18 549 322 108 74 152 51 576 238 820 726 758 6 597 665 .. 15 279 204 660 104 .. .. .. 2 207 676 ..

2000 489 813 80 277 145 857 721 362 74 488 146 330 69 955 17 157 69 188 564 597 1 040 367 126 579 76 504 3 903 68 216 72 439 551 237 1 340 523 511 187 9 762 564 970 213 023 70 899 54 058 396 104 84 100 48 947 18 953 380 004 68 563 51 775 298 091 693 693 7 075 609 .. 16 086 790 756 664 .. 1 523 767 554 334 2 053 321 ..

2005 523 479 92 581 142 063 735 829 82 005 145 965 65 589 18 421 68 624 563 577 994 460 135 311 78 376 3 859 69 656 73 312 574 262 1 350 321 569 466 13 095 614 648 209 448 78 287 54 469 398 827 87 686 50 264 20 314 431 393 66 913 54 209 330 740 678 253 7 228 293 .. 16 480 697 863 895 7 465 862 .. .. 2 135 398 ..

2006 529 885 89 711 138 342 727 850 83 285 147 021 73 470 17 837 79 900 551 868 1 002 426 131 794 77 485 4 391 69 166 74 656 563 373 1 332 533 575 193 12 946 643 362 205 559 78 186 54 288 414 148 82 647 50 318 20 526 423 789 66 778 53 846 350 881 675 547 7 150 744 .. 16 434 113 881 670 .. .. .. 2 201 494 ..

2007 537 931 86 967 133 440 749 289 92 828 147 246 68 920 20 949 78 249 542 721 976 584 134 637 75 651 4 619 68 371 76 870 555 078 1 364 258 591 429 12 361 670 204 204 199 76 222 56 006 415 449 80 269 48 395 20 672 432 112 65 233 51 910 382 378 666 079 7 287 750 .. 16 625 965 881 782 .. .. .. 2 206 100 ..

2008

2009

544 574 86 882 135 823 731 081 93 970 142 185 65 404 19 546 70 126 537 953 979 803 130 758 73 328 5 022 68 020 77 954 540 620 1 280 903 605 407 12 188 699 201 203 314 75 764 54 425 406 081 78 032 49 001 21 384 398 444 63 014 53 653 368 734 646 736 7 090 753 .. 16 258 947 910 098 .. .. .. 2 245 851 ..

541 178 80 148 123 209 689 313 90 933 134 206 62 511 16 189 66 003 514 380 912 606 124 110 66 976 4 779 62 312 74 111 490 113 1 205 673 609 167 11 684 688 927 197 787 73 101 51 809 387 700 74 854 44 690 19 373 359 659 59 097 52 366 371 149 593 380 6 642 320 .. 15 352 402 890 515 .. .. .. 2 130 321 ..

2010 540 211 84 808 130 611 699 302 91 576 137 008 63 007 19 892 74 397 522 156 946 388 117 878 67 638 4 646 61 895 76 924 499 359 1 256 095 667 755 12 250 701 360 209 286 73 491 54 347 407 475 70 634 45 382 19 411 347 181 65 072 54 095 403 495 609 147 6 854 728 .. 15 858 726 954 325 .. .. .. 2 221 342 ..

2011 541 543 82 761 120 146 701 212 .. 135 277 58 052 20 484 66 861 495 982 928 695 114 728 66 034 4 441 57 750 78 452 486 601 1 306 518 697 708 12 125 .. 195 064 74 393 53 294 405 741 69 317 44 698 19 463 345 887 60 754 49 973 424 091 566 269 6 716 993 .. 15 674 979 991 691 .. .. .. 2 284 293 ..

2012 543 648 80 059 116 520 698 626 .. 131 466 53 118 19 188 60 966 496 221 939 083 110 985 61 981 4 468 58 531 .. 460 083 1 343 118 .. 11 839 .. 191 669 76 048 52 733 399 268 68 752 42 710 18 911 340 809 57 604 51 449 439 874 584 304 6 487 847 .. 15 505 620 1 027 739 .. .. .. 2 295 045 ..

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Greenhouse gas emissions Tonnes per capita 2000

2012 or latest available year

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25

20

15

10

5

0

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ENVIRONMENT AND SCIENCE • AIR AND CLIMATE

REGIONAL QUALITY OF AIR The impact of outdoor air pollution on people’s health is sizeable. Fine particulate matters (or PM2.5, 2.5 microns and smaller), a mixture of sulphates, nitrates, ammonia, sodium chloride, carbon, mineral dust and water suspended in the air, can cause respiration and cardiovascular morbidity or mortality from lung cancer, cardiovascular and respiratory diseases.

Definition Average exposure to air pollution (PM2.5) is estimated at city, regional and national levels using the satellite-based data. The satellite-based data are weighted with data on population distributed at circa 1km2 resolution. Subsequently, the exposure to air pollution is calculated by taking the weighted average value of PM2.5 for the 1km2 grid cells present in each territory (country, region or city), with the weight given by the estimated population count in each cell. Comparability of regional statistics is affected by differences in the meaning of the word “region”. This results in significant differences in terms of geographic

area and population both within and among countries. To address this issue, the OECD has classified regions within each country based on two levels: territorial level 2 (TL2, large regions) and territorial level 3 (TL3, small regions). Metropolitan areas are defined as the functional urban areas (FUA) with population above 500 000. The functional urban areas are defined as densely populated municipalities (urban cores) and adjacent municipalities with high levels of commuting towards the densely populated urban cores (hinterland). Functional urban areas can extend across administrative boundaries, reflecting the economic geography of where people actually live and work.

Comparability Air pollution in regions refers here to small regions. The functional urban areas have not been identified in Iceland, Israel, New Zealand and Turkey. The FUA of Luxembourg does not appear in the figures since it has a population below 500 000 inhabitants.

Overview OECD estimates show a wide variation in PM2.5 exposure levels across regions within countries, with the largest exposures in Mexico, Italy, Chile and Turkey. In 58% of OECD regions, representing 64% of the total OECD population, the levels of air pollution were higher than World Health Organization recommendations. Critically high values are found in some regions in Korea, Turkey, Mexico, Italy and Israel, among the OECD countries, and China and India. For example, Mexico shows a national average exposure to PM2.5 of 11.5 µg/m3, however half of the population live in regions with air pollution levels higher than the national average. More than one-third of urban population in the OECD area breathes a cleaner air than the rest of the population. At the country level, the share of urban population exposed to lower levels of air pollution than the rest of the country varies from 100% in Estonia to 10% in Spain. In the Czech Republic, Denmark, Finland, H u n g a r y, I r e l a n d , N o r w ay, S l ov e n i a a n d t h e Slovak Republic the entire urban population is exposed to pollution levels above the national average. Cities’ characteristics and local efforts to reduce air pollution paint a differentiated geography of urban air quality also within countries. For example, the average exposure to PM2.5 in Cuernavaca (Mexico), Milan (Italy) and Kurnamoto (Japan) is three times higher than in other cities of these countries. All cities in Canada, Finland, Chile, Estonia, Norway, Ireland and Australia have relatively low level of air pollution.

150

Sources • OECD (2013), OECD Regions at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2012), Redefining “Urban”: A New Way to Measure Metropolitan Areas, OECD Publishing. • Piacentini, M. et K. Rosina (2012), Measuring the Environmental Performance of Metropolitan Areas with Geographic Information Sources, OECD Regional Development Working Papers, No. 2012/05, OECD Publishing.

Online databases • Metropolitan areas.

Websites • Regions at a Glance interactive, http://rag.oecd.org. • Regional statistics and indicators, www.oecd.org/ governance/regional-policy/ regionalstatisticsandindicators.htm. OECD FACTBOOK 2015-2016 © OECD 2016

5

0

10

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Brno

Gold Coast

Tallinn

Dublin

Country average

Oslo

Ljubljana

Bratislava

Budapest

Vienna

Luxembourg

Luxembourg

Andaman and Nicobar Sakha Federal City of Moscow Republic Rio Grande do Norte Sao Paulo Western Gauteng Cape

Tibet

Other Capital Region Regions Estonia Estonia

Border, Midland and Western Southern and Eastern South Island North Island

Henan National Capital Territory of Delhi

Country average

Helsinki

Linz

Melbourne

Brussels

Thessalonica

The Hague

Moravia-Silesia Zurich

40

Copenhagen

Porto

Antwerp

Athens

Lisbon

Toronto

Minimum

Utrecht

Ticino

Southwest

Ontario

South Sweden

Silesia

Southern-Kanto

District of Columbia

Canary Melilla Islands MecklenburgBerlin Vorpommern Northern Capital Jutland North Azores Northern North West England Ireland Athens Northern Greece North South Netherlands Netherlands Central West Slovakia Slovakia Central Southern District District Trøndelag South-Eastern Norway Tasmania Northern Territory Southern Northern Great Plain Transdanubia Western Helsinki-Uusimaa Finland Flemish Brussels Capital Region Region Eastern Western Slovenia Slovenia

Nunavut

Pomerania Upper Norrland

Hokkaido

Alaska

Alsace

Vorarlberg

Southeastern Anatolia - East Capital Region

Minimum

Quebec

Zurich

Ostrava

Essen

Liverpool

Santiago

Concepción Geneva

Glasgow

Malmö

15

Stockholm

Bremen

Zaragoza

Kraków

Tyrol Limousin

Jeju

15

Las Palmas

GdaĔsk

Buffalo

20

Portland

Strasbourg

Cheongju

Eastern Black Sea

Lombardy

ȝg/m3

Toulon

25

Kumamoto

10

Ulsan

30 Tarapacá

20

Milan

25

Naha

35 Morelos

35

Palermo

0 Yucatan Sardinia Magallanes y Antártica

5

Cuernavaca

30

Mérida

Country (number of cities)

ENVIRONMENT AND SCIENCE • AIR AND CLIMATE REGIONAL QUALITY OF AIR

Regional disparities in average exposure to air pollution Regions with the lowest and highest exposure to PM2.5 levels, 2011 Maximum 110

100

90

80

70

60

50

40

30

20

10

0

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Share of urban population with exposure to PM2.5 below the national average

100

2011

90

80

70

60

50

40

30

20

10

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Cities with the lowest and highest exposure to PM2.5 levels in each country, 2011

Urban disparities in average exposure to PM2.5

ȝm/m3 40 Maximum

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Country (No. of cities)

151

ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT

EXPENDITURE ON R&D Research and development

Expenditure on research and development (R&D) is a key indicator of countries’ innovative efforts. Research and development comprise creative work undertaken on a systematic basis in order to increase the stock of knowledge (including knowledge of man, culture and society) and the use of this knowledge to devise new applications.

Definition Research and development covers three activities: basic research; applied research; and experimental development. Basic research is experimental or theoretical work undertaken primarily to acquire new knowledge of the underlying foundation of phenomena and observable facts, without any particular application or use in view. Applied research is also original investigation undertaken in order to acquire new knowledge; it is, however, directed primarily towards a specific practical aim or objective. Experimental development is systematic work, drawing on existing knowledge gained from research and/or practical experience, which is directed to producing new materials, products or devices, to installing new processes, systems and services, or to improving substantially those already produced or installed. The main aggregate used for international comparisons is gross domestic expenditure on R&D (GERD). This consists of the total expenditure (current and capital) on R&D carried out by all resident companies, research institutes, university and government laboratories, etc. It includes R&D funded from abroad but excludes domestic funds for R&D performed outside the domestic economy. GERD is expressed in

constant 2010 dollars (adjusted for purchasing power parity) and as a share of GDP (R&D intensity).

Comparability R&D data have been compiled according to the 2002 guidelines of the Frascati Manual which have now been superseded by the 2015 edition. The revised definitions are in the course of being implemented and are not expected to revise significantly the major indicators. Estimates of the resources allocated to R&D are affected by national characteristics such as the periodicity and coverage of national R&D surveys across institutional sectors and industries (and the inclusion of firms and organisations of different sizes); and the use of different sampling and estimation methods. Data for Israel exclude defence. Those for Korea, prior to 2007, exclude social sciences and the humanities. For the United States, R&D capital expenditures are excluded (except for the government sector) and depreciation charges of the business enterprises are included. The latest update to the System of National Accounts (SNA), the 2008 SNA, recognised the role of R&D as an activity leading to the creation of an intellectual asset. One implication of this is that the level of GDP has been revised upwards and the R&D intensity ratio has been reduced, as the numerator has stayed constant and the denominator increased. Users should be careful when comparing the R&D intensity of countries that have and have not capitalised R&D in their national accounts. Likewise, they should avoid comparing previously published measures of R&D intensity and more recent ones.

Overview Among OECD countries, the United States has the highest level of gross domestic expenditure on R&D (GERD), with 40% of the total OECD GERD in 2013, followed by Japan (14%) and Germany (9%). Since 2000, real R&D expenditure has been growing fastest in Estonia (average annual growth rate of 12.5%), Turkey (9.7%), Korea (9.4%) and Slovenia (7%). Outside the OECD area, China’s average annual real growth in R&D spending has been 17.2%, making it the world’s second largest R&D performer and ahead of Japan since 2009. In 2013, R&D amounted to 2.4% of GDP for the OECD as a whole. Denmark, Finland, Israel, Japan, Korea and Sweden were the only OECD countries whose R&D-toGDP ratio exceeded 3%. Over the last decade, R&D intensity grew in the EU (from 1.7% to 1.9%), in Japan (from 3.1% to 3.5%) and in the United States (from 2.6% to 2.7%). Estonia, Portugal, Slovenia and Turkey were the fastest growing OECD countries. In the same period, R&D intensity in China increased from 1.1% to 2.1% and surpassed the EU for the first time in 2012.

152

Sources • OECD (2015), Main Science and Technology Indicators, OECD Publishing.

Further information Analytical publications • OECD (2015), Frascati Manual 2015: Guidelines for Collecting and Reporting Data on Research and Experimental Development, OECD Publishing. • OECD (2015), OECD Science, Technology and Industry Scoreboard, OECD Publishing. • OECD (2014), OECD Science, Technology and Industry Outlook, OECD Publishing.

Methodological publications Online databases • OECD Science, Technology and R&D Statistics.

Websites • Main Science and Technology Indicators (supplementary material), www.oecd.org/sti/msti. • Research and Development Statistics, www.oecd.org/sti/rds. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT EXPENDITURE ON R&D

Gross domestic expenditure on R&D Million US dollars, 2010 constant prices and PPPs Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

.. 6 093 7 540 23 380 .. 2 362 5 073 150 5 693 44 884 71 846 1 572 1 674 280 1 711 6 669 21 201 123 563 23 896 .. 5 058 11 993 1 197 3 592 3 395 2 061 531 656 11 201 12 630 .. 4 053 33 572 338 685 249 178 797 175 .. 46 018 .. .. 22 623 3 126

12 206 6 424 7 161 23 499 .. 2 399 5 353 163 5 897 46 165 72 750 .. 1 883 281 1 815 6 588 22 066 125 578 24 934 .. 5 639 11 689 .. 3 680 3 103 1 960 500 668 12 428 .. .. 4 208 34 389 333 151 254 184 801 542 .. 56 499 .. .. 25 097 ..

.. 6 825 6 996 23 857 .. 2 589 5 527 188 6 097 45 371 73 457 1 691 1 831 275 1 988 6 286 21 634 128 853 26 543 578 5 689 11 960 1 370 3 829 3 104 1 877 526 595 13 654 12 189 .. 4 069 34 831 342 931 256 513 819 758 .. 65 854 .. .. 27 753 3 545

13 773 6 981 7 145 24 959 .. 2 709 5 468 222 6 361 46 088 73 239 1 715 1 801 .. 2 178 6 563 21 793 131 447 29 986 596 6 011 12 259 .. 3 791 3 367 1 997 494 682 14 311 11 931 9 346 4 774 34 443 347 142 259 025 835 994 .. 78 656 .. .. 26 629 3 964

.. 7 818 7 172 25 401 .. 2 942 5 537 263 6 567 45 888 73 809 1 894 2 013 311 2 333 7 145 21 874 140 618 32 316 606 6 352 12 450 1 432 3 958 3 550 2 090 519 732 15 663 12 263 .. 5 901 35 873 361 066 265 325 872 322 .. 94 305 .. .. 26 276 4 429

17 031 8 039 7 469 25 663 .. 3 313 5 771 351 6 849 46 997 77 602 1 942 2 227 351 2 473 7 752 23 162 147 337 36 635 678 6 154 12 689 .. 4 178 3 684 2 676 542 840 17 454 13 255 .. 6 192 37 387 377 207 279 139 916 577 .. 111 357 .. .. 28 551 4 867

.. 8 545 7 828 25 673 892 3 699 6 091 363 7 222 47 513 79 820 2 064 2 183 338 2 659 8 807 24 492 152 878 40 952 702 6 274 12 660 1 575 4 571 4 015 3 231 566 834 19 075 12 752 .. 8 070 39 153 395 494 289 692 960 528 .. 127 816 .. .. 32 234 5 040

20 174 9 223 8 231 25 303 1 113 3 615 6 684 405 7 712 48 490 85 650 2 359 2 254 338 2 921 8 926 24 898 151 532 43 839 707 6 971 12 564 .. 4 802 4 476 4 161 616 984 20 578 13 610 10 875 8 154 39 035 415 342 303 718 998 381 .. 147 563 .. .. 31 745 5 232

.. 8 969 8 272 25 333 1 037 3 593 7 005 382 7 476 50 530 84 767 2 134 2 436 338 3 192 8 611 24 697 138 627 46 549 698 7 094 12 395 1 679 4 828 5 072 4 413 597 1 013 20 359 12 611 .. 9 086 38 605 411 369 302 976 985 019 .. 186 611 .. .. 35 078 4 847

20 546 9 586 8 766 25 029 1 028 3 796 6 812 444 7 653 50 730 87 822 1 927 2 473 .. 3 166 8 673 25 152 140 607 52 173 641 7 864 12 822 .. 4 744 5 723 4 363 816 1 163 20 336 12 585 .. 9 853 38 139 410 093 308 607 998 864 .. 213 010 .. .. 33 094 4 405

20 653 9 662 9 358 24 946 1 162 4 507 6 959 712 7 666 52 155 93 726 1 967 2 625 314 3 082 9 372 25 022 145 528 58 427 618 7 651 14 383 1 722 4 899 6 223 4 071 903 1 378 19 756 12 952 .. 10 921 38 787 420 072 320 503 1 033 905 .. 243 035 .. .. 33 298 4 529

.. 10 485 9 770 24 436 1 265 5 129 7 045 687 7 101 53 196 96 756 1 890 2 744 .. 3 160 9 993 25 548 146 330 64 268 506 8 077 14 527 .. 5 054 7 478 3 695 1 114 1 426 18 608 13 145 12 250 11 964 37 633 419 722 325 744 1 048 576 .. 282 481 .. .. 35 522 4 614

.. 10 754 9 963 23 673 1 398 5 474 7 089 562 6 781 53 493 96 069 2 119 3 078 263 .. 10 236 24 835 154 515 68 149 515 9 505 14 638 1 693 5 168 7 428 3 617 1 157 1 417 17 960 13 396 .. 12 774 38 116 433 380 325 568 1 076 732 .. 317 848 .. .. 35 937 ..

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Gross domestic expenditure on R&D As a percentage of GDP 2013 or latest available year

2003 or first available year

5.0 4.5 4.0 3.5 3.0 2.5 2.0 1.5 1.0 0.5 0.0

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ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT

RESEARCHERS On average, in OECD countries, labour costs account for half of the R&D expenditure. Researchers represent around 60% of total R&D personnel on average in the OECD.

Definition Researchers are professionals engaged in the conception and creation of new knowledge, products, processes, methods and systems, as well as those who are directly involved in the management of projects for such purposes. They include researchers working in both civil and military research in government, universities and research institutes as well as in the business sector. Researchers are part of human resources devoted to R&D. Other categories of R&D personnel are technicians (and equivalent staff) who participate in R&D by performing scientific and technical tasks, and other supporting staff (skilled and unskilled craftsmen, secretarial and clerical staff participating in R&D projects).

Comparability The data on researchers have been compiled according to the 2002 guidelines of the Frascati Manual which have now been superseded by the 2015 edition. The revised definitions are in the course of being implemented and are not expected to revise significantly the major indicators. Comparability over time is affected to some extent by improvements in the coverage of national R&D surveys and by the efforts of countries to improve the international comparability of their data. For the United States, the total numbers of researchers are OECD estimates and exclude military personnel in the government sector. For China, from 2009 researcher data are collected according to the Frascati Manual definition of researcher.

The number of researchers is measured in full-time equivalents (i.e. a person working half-time on R&D is counted as 0.5 person-year) and expressed per thousand people employed in each country. The number of researchers includes staff engaged in R&D during the course of one year.

Overview In the OECD area, around 4.4 million persons were employed as researchers in 2013. There were about 7.8 researchers per thousand of employed persons, compared with 5.4 per thousand employed in 1995, and this has steadily increased over the last two decades. The Nordic countries as well as Korea and Israel top the table for the numbers of researchers per thousand persons employed, with Israel the highest in the OECD, recording 17.4 researchers per thousand persons employed in 2012. Conversely, researchers per thousand of employed people are low in Chile and Mexico. Other countries with low rates, below 5.0 researchers per thousand of employed people, include Italy, Poland and Turkey. In 2012, in the OECD, about 2.6 million researchers were engaged in the business sector. This represents approximately 60% of the total although there are differences across countries: two out of three researchers work in the business sector in the United States, about three out of four in Japan and Korea, but less than one out of two in the EU. Chile, Mexico, and South Africa have a low intensity of business researchers (less than one per 1 000 employees in industry). In these countries, the business sector plays a much smaller role in the national R&D system than the higher education and government sectors.

154

Sources • OECD (2015), Main Science and Technology Indicators, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Science, Technology and Industry Scoreboard, OECD Publishing. • OECD (2014), OECD Science, Technology and Industry Outlook, OECD Publishing.

Methodological publications • OECD (2015), Frascati Manual 2015: Guidelines for Collecting and Reporting Data on Research and Experimental Development, OECD Publishing.

Online databases • OECD Science, Technology and R&D Statistics.

Websites • Main Science and Technology Indicators (supplementary material), www.oecd.org/sti/msti. • Research and Development Statistics, www.oecd.org/sti/rds. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT RESEARCHERS

Researchers Per thousand employed, full-time equivalent Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

.. .. 7.7 7.5 .. 3.1 7.1 4.5 15.8 6.8 6.6 3.3 3.5 11.7 5.1 .. 2.8 10.0 6.3 .. 0.6 5.4 5.7 8.5 4.0 3.5 4.7 4.9 4.6 10.5 .. 1.2 6.5 7.3 5.4 6.3 .. 1.0 .. .. 7.8 1.2

7.8 6.4 7.4 7.4 .. 3.1 9.3 5.2 16.4 7.1 6.7 .. 3.5 .. 5.3 .. 3.0 9.7 6.4 .. 0.8 5.2 .. .. 4.1 3.7 4.5 5.0 4.7 .. .. 1.2 7.1 7.5 5.6 6.4 .. 1.1 .. .. 7.4 ..

.. .. 7.4 7.7 .. 3.3 9.1 5.0 17.7 7.4 6.9 3.5 3.6 12.2 5.5 .. 2.9 10.1 6.8 6.7 0.9 5.2 6.5 8.9 4.3 4.0 4.7 4.1 5.1 11.0 .. 1.7 7.7 8.0 5.8 6.7 .. 1.2 .. .. 7.3 1.2

8.3 6.8 7.7 8.0 .. 3.4 9.6 5.6 17.3 7.7 6.9 .. 3.6 .. 5.9 .. 3.0 10.0 6.9 6.8 1.0 5.8 .. 8.9 4.4 4.1 5.2 4.3 5.3 11.2 6.0 1.7 8.0 7.8 6.0 6.7 .. 1.2 .. .. 7.1 1.5

.. 7.3 7.8 8.3 .. 4.9 10.2 5.4 16.4 7.7 6.9 4.2 3.8 13.4 5.9 .. 3.4 10.4 7.9 7.2 1.1 5.7 6.3 9.0 4.4 4.2 5.2 5.7 5.5 12.7 .. 2.0 8.6 7.6 6.2 6.9 .. 1.5 .. .. 6.8 1.4

8.5 7.4 8.1 8.4 .. 5.3 10.3 5.5 16.5 7.9 7.1 4.2 4.2 14.2 5.9 .. 3.5 10.4 8.6 6.4 0.9 6.2 .. 9.3 4.1 4.9 5.5 6.2 5.6 12.6 .. 2.1 8.7 7.7 6.3 7.0 .. 1.6 .. .. 6.7 1.4

.. 7.9 8.3 8.9 0.9 5.5 10.5 5.7 15.6 8.2 7.2 4.4 4.1 12.5 5.9 .. 3.7 10.4 9.5 6.6 0.9 5.8 6.9 9.6 4.1 5.6 5.7 6.4 5.8 10.1 .. 2.4 8.6 7.6 6.4 7.0 .. 1.9 .. .. 6.6 1.4

8.6 8.4 8.2 9.0 0.9 5.7 12.3 6.2 16.0 8.4 7.4 .. 4.5 12.9 6.8 .. 3.8 10.0 10.0 6.5 0.9 5.7 .. 9.8 3.9 8.0 5.6 7.0 6.1 11.0 5.5 2.5 8.5 8.1 6.6 7.2 .. 2.1 .. .. 6.4 1.3

.. 8.5 8.6 8.8 0.7 5.6 13.0 7.5 16.3 8.7 7.8 .. 5.0 14.9 7.2 .. 4.1 10.1 10.4 6.8 1.0 5.3 7.5 10.1 3.9 8.1 6.0 7.6 6.7 10.6 .. 2.7 8.8 8.8 6.8 7.5 .. 1.5 .. .. 6.4 1.4

.. 8.9 9.1 9.1 0.8 5.8 13.6 7.4 16.7 9.1 8.0 .. 5.3 .. 7.5 .. 4.2 10.2 11.1 7.3 0.8 6.1 .. 10.2 4.2 8.5 7.0 8.0 6.9 11.0 .. 2.8 8.8 8.5 7.1 7.5 .. 1.6 .. .. 6.3 1.4

.. 8.9 9.4 9.2 0.8 6.1 14.2 7.7 15.9 9.2 8.1 5.6 5.7 13.5 8.2 15.7 4.3 10.2 11.9 8.2 0.8 6.9 7.4 10.4 4.1 9.2 6.9 9.3 6.8 10.6 .. 3.0 8.6 8.8 7.2 7.7 .. 1.7 .. .. 6.3 1.4

.. 9.3 9.6 8.8 0.9 6.6 14.9 7.7 15.9 9.6 8.4 6.2 5.9 .. 8.6 17.4 4.5 10.0 12.8 6.6 .. 8.3 .. 10.4 4.3 9.3 6.9 9.5 6.9 10.7 7.5 3.3 8.7 8.7 7.5 7.8 .. 1.8 .. .. 6.2 1.5

.. 9.4 9.8 .. 0.8 6.7 14.9 7.3 15.7 9.8 8.5 7.5 6.1 .. .. .. 4.9 10.2 12.8 6.8 .. 8.8 7.9 10.4 4.6 9.7 6.7 9.4 6.9 13.3 .. 3.5 8.7 .. 7.7 .. .. 1.9 .. .. 6.2 ..

1 2 http://dx.doi.org/10.1787/888933336548

Researchers Per thousand employed, full-time equivalent, 2013 or latest available year Business

Other

20 18 16 14 12 10 8 6 4 2 0

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ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT

PATENTS Patent-based indicators provide a measure of the output of a country’s R&D, i.e. its inventions. The methodology used for counting patents can however influence the results, as simple counts of patents filed at a national patent office are affected by various kinds of limitations (such as weak international comparability) and highly heterogeneous patent values. To overcome these limits, the OECD has developed triadic patent families, which are designed to capture all important inventions and to be internationally comparable.

Comparability The concept of triadic patent families has been developed in order to improve the international comparability and quality of patent-based indicators. Indeed, only patents registered in the same set of countries are included in the family: home advantage and influence of geographical location are therefore eliminated. Furthermore, patents included in the triadic family are typically of higher economic value: patentees only take on the additional costs and delays of extending the protection of their invention to other countries if they deem it worthwhile.

Definition A patent family is defined as a set of patents registered in various countries (i.e. patent offices) to protect the same invention. Triadic patent families are a set of patents filed at three of these major patent offices: the European Patent Office, the Japan Patent Office and the United States Patent and Trademark Office. Triadic patent family counts are attributed to the country of residence of the inventor and to the date when the patent was first registered. Triadic patent families are expressed as numbers and per million inhabitants.

Sources

Overview

• OECD (2015), OECD Patent Statistics (Database).

Although the volume of triadic patent families remained relatively steady over time, with more than 50 500 triadic patent families filed in 2013, there has been a significant shift in the origin of patented inventions. The share of triadic patent families originating from Europe (26.2%), Japan (26.6%) and the United States (27.0%) report a loss of 1 to 4 percentage points compared to the levels observed in 2003. Asian countries are increasingly contributing to patent families: the most spectacular growth among OECD countries has been observed by Korea, whose share of all triadic patent families increased from 3.8% in 2003 to 5.8% in 2013. Strong rises are also observed for China and India, with an average growth in the number of triadic patents of more than 17% and 12% a year respectively seen between 2003 and 2013.

Further information

When triadic patent families are expressed relative to the total population, Switzerland, Japan, Germany, Sweden and Denmark were the five most inventive countries in 2013, with the highest values recorded in Switzerland (148) and Japan (125). Ratios for Austria, Belgium, Finland, Israel, Korea, the Netherlands and the United States are also above the OECD average (40).

156

Analytical publications • Haščič, I. and M. Migotto (2015), “Measuring Environmental innovation using patent data”, OECD Environment Working Papers, No. 2015/89. • OECD (2015), OECD Science, Technology and Industry Scoreboard, OECD Publishing. • OECD (2014), OECD Science, Technology and Industry Outlook, OECD Publishing.

Methodological publications • Dernis, H. and M. Khan (2004), “Triadic Patent Families Methodology”, OECD Science, Technology and Industry Working Papers, No. 2004/2. • OECD (2009), OECD Patent Statistics Manual, OECD Publishing. • Squicciarini, M., H. Dernis and C. Criscuolo (2013), “Measuring Patent Quality: Indicators of Technological and Economic Value”, OECD Science, Technology and Industry Working Papers, No. 2013/03.

Websites • Intellectual Property (IP) statistics and analysis, www.oecd.org/innovation/intellectual-property-statistics-andanalysis.htm. OECD FACTBOOK 2015-2016 © OECD 2016

ENVIRONMENT AND SCIENCE • RESEARCH AND DEVELOPMENT PATENTS

Triadic patent families Number Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa World

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

466 339 438 635 9 20 281 3 417 2 809 7 242 11 42 5 61 387 917 16 630 1 157 28 14 1 364 57 113 15 9 4 8 213 754 983 12 2 294 16 022 17 287 53 762 65 154 109 2 83 28 54 541

491 349 473 681 6 23 287 1 318 2 753 6 890 12 37 14 67 323 929 16 830 1 570 15 14 1 870 81 132 20 8 4 17 225 794 992 10 2 231 16 504 17 356 54 969 58 272 172 5 80 39 56 013

498 346 464 669 3 23 312 6 350 2 757 6 747 20 50 6 86 363 900 17 909 2 195 23 21 1 987 76 120 16 12 6 16 207 758 1 042 11 2 202 16 807 17 340 57 009 57 358 167 3 79 43 58 149

524 353 565 736 7 24 369 0 396 2 968 6 997 15 60 5 96 422 974 18 712 2 570 27 19 1 974 80 134 24 12 1 14 293 804 1 100 17 2 098 17 230 18 101 59 618 67 403 175 2 70 38 60 830

482 408 541 715 6 25 390 3 390 3 051 7 143 24 59 7 97 501 964 17 717 2 750 21 19 1 761 73 142 18 16 2 22 292 970 1 087 16 2 169 17 399 18 411 59 281 76 522 206 1 91 49 60 762

365 355 478 667 9 28 317 7 293 2 885 6 532 22 48 8 76 421 822 17 992 2 350 24 27 1 478 72 123 18 21 3 8 269 885 1 149 17 2 091 15 502 16 678 55 359 71 565 214 5 75 40 56 815

346 376 430 682 7 23 316 4 259 2 782 5 809 14 59 10 93 349 729 17 722 1 982 15 19 1 065 56 106 25 42 4 12 258 964 1 008 9 1 799 13 916 15 106 51 292 70 695 197 1 78 37 52 946

317 343 457 690 9 28 345 3 253 2 887 5 473 16 31 5 84 369 759 15 726 1 828 20 17 1 127 72 87 37 29 5 16 269 837 995 27 1 699 13 829 14 738 48 690 84 826 290 1 59 52 50 598

351 367 479 678 11 17 258 3 224 2 722 5 561 15 50 2 85 377 737 15 330 2 108 20 15 1 052 55 129 32 17 2 17 255 797 968 28 1 724 13 537 14 460 48 023 78 1 297 310 1 87 35 50 519

305 389 474 554 15 14 302 3 226 2 472 5 352 5 37 3 64 350 700 16 042 2 460 24 14 819 44 116 61 16 8 16 236 641 1 060 34 1 681 12 823 13 558 47 362 65 1 417 375 3 89 30 50 080

301 419 490 545 16 29 340 5 230 2 606 5 396 9 40 3 70 367 688 16 423 2 668 24 15 961 45 118 71 21 11 15 254 675 1 106 38 1 693 13 254 14 067 48 945 69 1 542 439 4 102 39 51 950

299 458 487 562 16 32 347 5 240 2 539 5 440 9 41 3 74 389 696 16 220 2 887 22 16 930 48 121 81 22 11 16 249 677 1 153 41 1 715 13 819 14 111 49 661 78 1 657 484 5 111 42 52 867

304 500 471 564 15 38 364 5 241 2 484 5 465 8 40 3 75 414 705 15 970 3 154 20 17 916 50 122 92 26 11 16 244 644 1 207 42 1 770 14 606 14 162 50 604 88 1 785 528 6 119 42 54 037

1 2 http://dx.doi.org/10.1787/888933336477

Triadic patent families Number per million inhabitants, 2013 80

125 148

70 60 50 40 30 20 10 0

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EDUCATION OUTCOMES INTERNATIONAL STUDENT ASSESSMENT STUDENTS, COMPUTERS AND LEARNING EARLY CHILDHOOD EDUCATION AND CARE YOUTH INACTIVITY HOW MANY STUDENTS STUDY ABROAD? EDUCATIONAL ATTAINMENT

RESOURCES TEACHERS’ SALARIES EDUCATIONAL EXPENDITURE EXPENDITURE IN TERTIARY EDUCATION

EDUCATION • OUTCOMES

INTERNATIONAL STUDENT ASSESSMENT Outcomes

How effective are school systems in providing young people with a solid foundation in the knowledge and skills that will equip them for life and learning beyond school? The OECD Programme for International Student Assessment (PISA) assesses student knowledge and skills at age 15, i.e. toward the end of compulsory education. The PISA 2012 survey covers mathematics, reading, science and problemsolving. For the first time, PISA 2012 also included an assessment of the financial literacy of young people and an optional computer-based assessment of mathematics.

Definition PISA is a triennial survey of 15-year-old students around the world. The survey examines how well students can extrapolate from what they have learned and can apply that knowledge in unfamiliar settings, both in and outside of school. The PISA survey covers 3 main subjects: mathematics, reading and science and in each round, one of these subjects is the major domain and the other two are minor domains. In PISA 2012 the major domain was mathematics. For PISA, mathematical literacy means the capacity to formulate, employ and interpret mathematics in a variety of contexts to describe, predict and explain phenomena. It assists individuals in recognising the role that mathematics plays in the world and to make the wellfounded judgements and decisions needed by constructive, engaged and reflective citizens. Reading literacy is the capacity to understand, use and reflect on written texts in order to achieve one’s goals, develop one’s knowledge and potential, and participate in society. Scientific literacy is

the capacity to use scientific knowledge to identify questions, acquire new knowledge, explain scientific phenomena, and draw evidence-based conclusions about science-related issues.

Comparability Leading experts in countries participating in PISA provide advice on the scope and nature of the assessments, with final decisions taken by the PISA Governing Board. Substantial efforts and resources are devoted to achieving cultural and linguistic breadth and balance in the assessment materials. Stringent quality assurance mechanisms are applied in the item development and translation, sampling, data collection, scoring and data management stages to ensure comparability of the results. Around 510 000 15-year-old students in 65 participating countries or economies were assessed in PISA 2012. Because the results are based on probability samples, standard errors (S.E.) are normally shown in the tables.

Sources • OECD (2014), PISA 2012 Results: What Students Know and Can Do: Student Performance in Mathematics, Reading and Science (Volume I, Revised edition, February 2014), PISA, OECD Publishing.

Overview

Further information

The average score from the PISA 2012 results across OECD countries are 494 points for mathematics, 496 points for reading and 501 points for science. Korea has the highest score in mathematics, with a mean score of 554 points, while Japan shows the highest scores in reading and science, with mean scores of 538 and 547 respectively.

• OECD (2013), PISA 2012 Results: Excellence Through Equity (Volume II): Giving Every Student the Chance to Succeed, PISA, OECD Publishing. • OECD (2013), PISA 2012 Results: What Makes Schools Successful? (Volume IV): Resources, Policies and Practices, PISA, OECD Publishing.

Marked gender differences in mathematics performance – in favour of boys – are observed in 27 countries presented. Only in Iceland do girls outperform boys in mathematics. Across OECD countries, boys outperform girls with an 11 score-point difference. By contrast, girls outperform boys in reading everywhere. Across OECD countries, the difference in favour of girls is about 38 score points. In science, boys outperform girls in eight countries, while in five countries girls outperform boys. Across OECD countries, the gender differences in science tend to be smaller than in mathematics and reading, with only one score point in favour of boys.

160

Analytical publications

Statistical publications • OECD (2015), Education at a Glance. OECD Indicators, OECD Publishing.

Methodological publications • OECD (2014), PISA 2012 Technical Report, OECD, Paris. • OECD (2013), PISA 2012 Assessment and Analytical Framework: Mathematics, Reading, Science, Problem Solving and Financial Literacy, PISA, OECD Publishing.

Online databases • OECD PISA Database.

Websites • Programme for International Student Assessment (PISA), www.oecd.org/pisa. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES INTERNATIONAL STUDENT ASSESSMENT

Mean scores by gender in PISA 2012 Mathematics scale Girls Mean score Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

498 494 509 513 411 493 493 518 520 491 507 449 473 496 494 461 476 527 544 477 406 518 492 488 516 481 477 499 476 480 524 444 488 479 .. 489 383 .. .. 373 483 ..

Reading scale Boys

S.E.

Mean score

2.0 3.3 2.6 2.1 3.1 3.6 2.3 2.2 2.2 2.5 3.4 2.6 3.6 2.3 2.6 3.5 2.2 3.6 5.1 1.4 1.4 3.9 2.9 3.4 3.8 3.9 4.1 2.0 2.0 2.4 3.1 5.7 3.8 3.9 .. 0.5 2.3 .. .. 4.3 3.1 ..

510 517 520 523 436 505 507 523 517 499 520 457 482 490 509 472 494 545 562 502 420 528 507 490 520 493 486 503 492 477 537 452 500 484 .. 499 401 .. .. 377 481 ..

Science scale

Girls S.E. 2.4 3.9 2.9 2.1 3.8 3.7 2.9 2.6 2.6 3.4 3.0 3.3 3.7 2.3 3.3 7.8 2.4 4.6 5.8 1.5 1.6 3.6 3.2 2.8 4.3 4.1 4.1 2.0 2.4 3.0 3.5 5.1 4.2 3.8 .. 0.6 2.2 .. .. 4.4 3.7 ..

Mean score 530 508 525 541 452 513 512 538 556 527 530 502 508 508 538 507 510 551 548 503 435 525 530 528 539 508 483 510 503 509 527 499 512 513 .. 515 425 .. .. 410 495 ..

Boys S.E.

Mean score

2.0 3.4 2.7 2.1 2.9 3.4 2.6 2.3 2.4 3.0 3.1 3.1 3.3 2.5 3.0 3.9 2.3 3.6 4.5 1.8 1.6 3.5 3.5 3.9 3.1 3.7 5.1 1.8 1.9 2.8 2.5 4.3 3.8 3.8 .. 0.5 2.2 .. .. 4.3 3.2 ..

495 471 493 506 430 474 481 494 494 483 486 452 468 457 509 463 471 527 525 473 411 498 495 481 497 468 444 454 474 458 491 453 487 482 .. 478 394 .. .. 382 455 ..

Girls S.E. 2.3 4.0 3.0 2.3 3.8 3.3 3.3 2.4 3.1 3.8 2.9 4.1 3.9 2.4 3.5 8.2 2.5 4.7 5.0 1.9 1.7 4.0 3.3 3.3 3.7 4.2 4.6 1.7 2.3 4.0 3.1 4.6 4.5 4.1 .. 0.6 2.4 .. .. 4.8 3.5 ..

Mean score 519 501 503 524 442 508 493 543 554 500 524 473 493 480 520 470 492 541 536 483 412 520 513 496 527 490 467 519 493 489 512 469 508 498 .. 500 404 .. .. 383 489 ..

Boys S.E. 2.1 3.4 2.6 2.0 2.9 3.5 2.5 2.3 2.3 2.4 3.5 3.0 3.3 2.9 3.1 4.0 2.4 3.5 4.2 1.7 1.3 3.9 3.3 3.7 3.2 3.8 4.2 1.9 1.9 2.8 2.7 4.3 3.7 4.0 .. 0.5 2.3 .. .. 4.1 2.9 ..

Mean score 524 510 507 527 448 509 504 540 537 498 524 460 496 477 524 470 495 552 539 499 418 524 518 493 524 488 475 510 500 481 518 458 521 497 .. 502 406 .. .. 380 484 ..

S.E. 2.5 3.9 3.0 2.4 3.7 3.7 3.5 2.5 3.0 3.8 3.1 3.8 3.4 2.7 3.4 7.9 2.2 4.7 4.7 1.7 1.5 3.7 3.2 3.2 3.7 4.1 4.3 1.9 2.3 3.9 3.3 4.5 4.5 4.1 .. 0.6 2.3 .. .. 4.1 3.5 ..

1 2 http://dx.doi.org/10.1787/888933336494

Performance in mathematics, reading and science, PISA 2012 Mean score Mathematics

Reading

Science

575 550 525 500 475 450 425 400 375 350

1 2 http://dx.doi.org/10.1787/888933335359

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EDUCATION • OUTCOMES

STUDENTS, COMPUTERS AND LEARNING Information and communication technology (ICT) has revolutionised many aspects of people's personal and professional lives. As computers and the Internet have reached a central role in everyday life, students who have not acquired basic skills in reading, writing and navigating through a complex digital landscape will find themselves unable to participate fully in the economic, social and cultural life around them. By analysing PISA 2012 data, it is possible to examine how students’ access to ICT devices and their experience in using these technologies evolve in recent years.

since mathematics was the major domain assessed in PISA 2012, on the use of computers during mathematics lessons. Additional information on the availability and use of ICT at home and at school, as well as on school policies on using ICT, was collected through the main student and school questionnaires, and is available for the 65 participating countries and economies in PISA 2012.

Definition The OECD Programme for International Student Assessment (PISA) is a triennial survey of 15-year-old students around the world. The survey examines how well students can extrapolate from what they have learned and can apply that knowledge in unfamiliar settings, both in and outside of school. Additional questionnaire materials were developed and offered as international options to the participating countries and economies, including the information communication technology familiarity questionnaire. It consists of questions to students regarding their access to uses of, and attitudes towards computers.

Comparability In PISA 2012, 29 OECD countries and 13 partner countries and economies chose to distribute the optional ICT familiarity component of the student questionnaire. In 2012, this component contained 12 questions, some of which were retained from the previous PISA survey (2009) to allow for comparisons across time. New questions focused on the age at first use of computers and the Internet; the amount of time spent on the Internet; and,

Overview On average across OECD countries, students spent over 2 hours online each day in 2012. In that same year, 96% of 15-year-old students in OECD countries reported that they have a computer at home, 43% of students reported having three or more computes at home, and 72% reported that they use a desktop, laptop or tablet computer at school. But in Korea, only 42% of students reported that they use computers at school – and Korea is among the top performers in the digital reading and computer-based mathematics tests in the OECD Programme for International Student Assessment in 2012. By contrast, in countries where it is more common for students to use the Internet at school for schoolwork, students’ performance in reading declined between 2000 and 2012, on average.

162

Sources • OECD (2015), Students, Computers and Learning: Making the Connection, PISA, OECD Publishing.

Further information Analytical publications • OECD (2015), The ABC of Gender Equality in Education: Aptitude, Behaviour, Confidence, PISA, OECD Publishing. • OECD (2014), PISA 2012 Results: Creative Problem Solving (Volume V): Students’ Skills in Tackling Real-Life Problems, PISA, OECD Publishing. • OECD (2014), PISA 2012 Results: What Students Know and Can Do (Volume I, Revised edition, February 2014): Student Performance in Mathematics, Reading and Science, PISA, OECD Publishing. • OECD (2013), PISA 2012 Results: What Makes Schools Successful? (Volume IV): Resources, Policies and Practices, PISA, OECD Publishing.

Statistical publications • OECD (2015), Education at a Glance: OECD Indicators, OECD Publishing.

Methodological publications • OECD (2014), PISA 2012 Technical Report, OECD, Paris. • OECD (2013), PISA 2012 Assessment and Analytical Framework: Mathematics, Reading, Science, Problem Solving and Financial Literacy, PISA, OECD Publishing.

Online databases • OECD PISA Database.

Websites • Programme for International Student Assessment (PISA), www.oecd.org/pisa. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES STUDENTS, COMPUTERS AND LEARNING

ICT equipment and use at school and at home PISA 2012 ICT use at or for school Number of 15-year-old students per school computer Mean Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

0.9 2.9 2.8 2.8 4.7 1.6 2.4 2.1 3.1 2.9 4.2 8.2 2.2 4.1 2.6 4.7 4.1 3.6 5.3 2.2 15.5 2.6 1.2 1.7 4.0 3.7 2.0 3.3 2.2 3.7 2.7 44.9 1.4 1.8 .. 4.7 22.1 .. .. 16.4 3.0 ..

S.E. 0.0 0.5 0.3 1.0 0.9 0.1 0.3 0.1 0.1 0.2 1.3 1.1 0.1 0.0 0.2 0.6 0.5 0.1 0.2 0.0 2.0 0.2 0.1 0.1 0.1 0.3 0.2 0.0 0.1 0.8 0.2 9.7 0.1 0.2 .. 0.3 2.7 .. .. 2.2 0.1 ..

Home ICT equipment

Students using computers at school % 93.7 81.4 65.3 .. 61.7 83.2 86.7 61.0 89.0 .. 68.7 65.9 74.7 81.9 63.5 55.2 66.8 59.2 41.9 .. 60.6 94.0 86.4 91.9 60.3 69.0 80.2 57.2 73.2 87.0 78.3 48.7 .. .. .. 72.0 .. .. .. .. 80.2 ..

S.E. 0.3 1.0 0.8 .. 1.5 1.0 0.8 1.0 0.6 .. 1.3 1.3 1.0 0.6 1.4 1.5 0.7 1.9 1.7 .. 0.8 0.6 0.5 0.7 1.3 1.2 0.9 0.8 0.9 1.1 1.0 1.7 .. .. .. 0.2 .. .. .. .. 0.7 ..

Students browsing the Internet weekly for schoolwork (at school) % 80.8 48.0 29.4 .. 44.5 47.6 80.8 28.9 34.9 .. 28.9 44.9 35.7 28.9 32.4 30.6 28.8 11.3 11.0 .. 39.5 67.5 59.3 69.0 30.3 38.1 43.1 41.6 51.1 66.6 32.5 28.0 .. .. .. 41.9 .. .. .. .. 20.3 ..

S.E. 0.6 1.3 0.9 .. 1.3 1.1 0.8 1.0 1.1 .. 1.0 1.1 1.1 0.7 1.1 1.3 0.6 0.8 0.9 .. 0.8 1.3 1.0 1.3 1.2 1.1 1.3 0.7 1.0 1.5 0.9 1.2 .. .. .. 0.2 .. .. .. .. 0.8 ..

Students with at least one computer at home %

S.E.

99.0 99.5 98.9 98.9 88.3 98.1 99.9 98.5 99.8 99.0 99.4 94.6 96.2 99.3 98.7 96.5 98.7 92.4 98.6 99.1 58.5 99.8 96.8 99.1 97.7 97.1 94.4 99.7 97.9 99.6 99.5 70.7 98.8 94.5 .. 95.8 73.5 .. .. 25.8 92.8 ..

0.1 0.1 0.1 0.1 0.9 0.3 0.0 0.2 0.1 0.1 0.1 0.4 0.5 0.1 0.2 0.4 0.1 0.6 0.2 0.1 0.8 0.1 0.3 0.2 0.3 0.3 0.6 0.1 0.2 0.1 0.1 1.1 0.2 0.5 .. 0.1 0.7 .. .. 2.0 0.7 ..

Students with three or more computers at home % 64.6 45.3 55.0 53.0 20.9 36.9 84.7 37.3 56.1 45.0 54.0 18.4 24.2 70.7 36.0 44.6 27.7 17.1 10.1 56.6 9.1 69.0 41.6 83.9 22.9 36.6 26.4 43.4 37.9 74.8 58.9 4.1 50.9 37.6 .. 42.8 9.4 .. .. 1.9 10.5 ..

S.E. 0.5 1.1 0.6 0.6 0.8 0.9 0.6 0.7 0.7 0.9 0.9 0.7 0.8 0.9 0.8 1.0 0.4 0.6 0.6 0.7 0.5 0.7 0.9 0.6 1.0 1.1 0.8 0.8 0.7 0.7 0.7 0.5 0.8 1.3 .. 0.1 0.5 .. .. 0.8 0.9 ..

1 2 http://dx.doi.org/10.1787/888933336342

Time spent on line in school and outside of school Minutes per day, PISA 2012 During weekdays outside of school

During weekdays at school

During weekend days outside of school

200 180 160 140 120 100 80 60 40 20 0

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EARLY CHILDHOOD EDUCATION AND CARE As family structures change, so do the relative ages of parents. More women and men are waiting until later in life to start a family. They do so for a number of reasons, including planning for greater financial security and emotional maturity, taking more time to find a stable relationship, and committing to their careers before turning their attention to having children. As younger and older parents are also more likely to be in the workforce today, there is a growing need for early childhood education. In addition, there is increasing awareness of the key role that early childhood education plays in the cognitive and emotional development of the young. Enrolling children in early childhood education can also mitigate social inequalities and promote better student outcomes overall. Many of the inequalities found in education systems are already evident when children enter formal schooling and persist as they progress through the school system. Because inequalities tend to grow when school is not compulsory, earlier entrance into the school system may reduce these inequalities. In addition, preprimary education helps to prepare children to enter and succeed in formal schooling.

Definition The International Standard Classification of Education (ISCED) level 0 refers to early childhood programmes that have an intentional education component. ISCED level 0 programmes target children below the age of entry into primary education (ISCED level 1). These programmes aim to develop cognitive, physical and socio-emotional skills necessary for participation and well-being in school and society. Thanks to the new ISCED classification, level 0 covers now early childhood education for all ages, including very young children. Programmes are sub-classified into two categories, depending on the level of complexity of the educational content: early childhood educational development (code 01) and pre-primary education (code 02). Early childhood educational development programmes (code 01) are generally designed for children younger than 3. They were introduced as a new category in ISCED-2011 and were not covered by ISCED-97. Pre-primary education (code 02) corresponds exactly to level 0 in ISCED-97.

Comparability

Overview In most OECD countries, education now begins for most children well before they are 5 years old. Four out of ten 2-year-olds are enrolled in early childhood education across OECD countries, as a whole, growing to almost three out of four (74%) for 3-year-olds. The highest enrolment rates of 3-year-olds in early childhood education are found in Belgium, Denmark, France, Iceland, Italy, New Zealand, Norway, Spain and the United Kingdom. The ratio of children to teaching staff is an indicator of the resources devoted to early childhood education. The child-teacher ratio at the pre-primary level, excluding non-teaching staff (e.g. teachers’ aides), ranges from more than 20 children per teacher in Chile, China, France, Indonesia and Mexico, to fewer than 10 in Estonia, Iceland, New Zealand, Russia, Slovenia, Sweden and the United Kingdom. Sustained public funding is critical for supporting the growth and quality of early childhood education programmes. Public expenditure on pre-primary education is mainly used to support public institutions, but in some countries it also funds private institutions, to varying degrees. At the pre-primary level, annual expenditure, from both public and private sources, per child for both public and private institutions averages USD 8 008 in OECD countries. However, expenditure varies from USD 4 000 or less in Israel, Latvia and South Africa, to more than USD 10 000 in Australia, Iceland, Luxembourg, Sweden, the United Kingdom and the United States.

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There are many different early education systems and structures within OECD countries. Consequently, there is also a range of different approaches to identifying the boundary between early childhood education and childcare. These differences should be taken into account when drawing conclusions from international comparisons.

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2013), PISA 2012 Results: What Makes Schools Successful (Volume IV): Resources, Policies and Practices, PISA, OECD Publishing. • OECD (2011), Starting Strong III: A Quality Toolbox for Early Childhood Education and Care, OECD Publishing.

Methodological publications • OECD/Eurostat/UNESCO Institute for Statistics (2015), ISCED 2011 Operational Manual: Guidelines for Classifying National Education Programmes and Related Qualifications, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES EARLY CHILDHOOD EDUCATION AND CARE

Early childhood educational development programmes and pre-primary education 2013 Pre-primary share of total early childhood enrolment ISCED 02/ (ISCED 01 + ISCED 02) Australia Austria Belgium Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States OECD Brazil China Indonesia Russian Federation South Africa

42 87 .. 80 100 63 .. 79 100 77 .. .. 69 76 .. 100 .. 100 95 100 62 64 100 .. 100 70 77 73 .. .. 83 .. 81 64 100 61 84 100

2012

Early childhood educational development

Pre-primary education

Annual expenditure by educational institutions for all services, USD per student

Share of public expenditure

Pupils/contact staff ratio

Pupils/teaching staff ratio

Pupils/contact staff ratio

Pupils/teaching staff ratio

Early childhood educational development

Pre-primary

ISCED 01

ISCED 01

ISCED 02

ISCED 02

ISCED 01

ISCED 02

.. 6 .. 9 .. .. .. .. .. 5 .. .. 3 .. .. .. .. .. 26 .. .. .. .. .. .. 6 .. .. .. .. .. .. 9 8 .. .. .. ..

.. 9 .. 13 .. .. .. .. .. 5 .. .. 3 .. .. .. .. .. 83 .. 4 .. .. .. .. 6 9 5 .. .. .. .. 14 13 .. 20 .. ..

.. 9 .. 19 14 .. .. .. 15 9 12 11 6 .. 14 14 .. 11 25 14 .. 5 .. .. 13 9 .. 6 .. .. .. 10 12 15 17 19 4 ..

.. 14 16 27 14 .. 9 10 22 10 12 11 6 .. 14 15 .. 11 25 16 8 11 16 17 13 9 15 6 16 17 10 12 14 17 22 21 10 ..

4 69 .. .. .. .. .. 90 .. 70 .. .. 88 .. .. .. .. .. .. .. 72 86 .. .. .. 75 62 .. .. .. 64 .. 68 .. .. .. .. ..

47 87 96 .. 92 .. .. 89 93 79 .. 92 85 85 91 44 62 99 .. 87 87 86 76 61 83 79 73 .. .. .. 63 75 80 .. .. 88 .. ..

All early childhood education ISCED 01 + ISCED 02 21 84 .. 82 92 81 99 89 93 76 .. .. 86 .. 91 44 .. .. 83 87 80 86 76 .. 83 78 70 .. .. .. 63 .. 78 .. .. .. 89 ..

Early childhood educational development

Pre-primary

ISCED 01

ISCED 02

10 054 9 434 .. .. .. .. .. 17 860 .. 13 720 .. .. 12 969 .. .. .. .. .. .. .. 12 656 15 604 .. .. .. 11 665 7 924 14 180 .. .. 9 495 .. 12 324 .. .. .. .. ..

10 298 7 716 6 975 .. 4 447 .. .. 9 998 6 969 8 568 .. 4 539 10 250 3 416 7 892 5 872 5 674 19 719 .. 8 176 9 670 9 050 6 505 5 713 4 694 7 472 6 182 12 212 5 457 .. 10 699 10 042 8 008 .. .. .. .. 806

All early childhood education ISCED 01 + ISCED 02 10 146 7 954 .. 4 599 4 447 10 911 2 193 11 559 6 969 9 744 .. .. 11 096 .. 7 892 5 872 .. .. 2 445 8 176 10 726 11 383 6 505 .. 4 694 8 726 6 588 12 752 5 457 .. 10 548 .. 7 886 2 939 .. .. 4 887 806

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Enrolment rates at age 3 and 4 in early childhood education 2013 Enrolment rates at age 3 in pre-primary education (ISCED 02) Enrolment rates at age 3 in early childhood educational programmes (ISCED 01) 100

Enrolment rates at age 4 (ISCED 02 + ISCED 01)

100

90 80 70 60 50 40 30 20 10 0

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YOUTH INACTIVITY Young people who are neither in employment nor in education or training (the “NEET” population) are at risk of becoming socially excluded – individuals with income below the poverty-line and lacking the skills to improve their economic situation.

Definition The share refers to young people who are neither in education or training nor in employment, as a percentage of the total number of young people in the corresponding age group. Young people in education include those attending part-time as well as full-time education, but exclude those in non-formal education and in educational activities of very short duration. Employment is defined according to the ILO Guidelines and covers all those who have been in paid work for at least one hour in the reference week of the survey or were temporarily absent from such work.

Overview On average across OECD countries, 17.9% of the 20-24 year-olds and 7.2% of the 15-19 year-olds were neither in school nor at work in 2014. For OECD countries as a whole, the proportion of the 20-24 year-olds who were not in education but employed fell from 48.2% to 36.2% between 2000 and 2014, while the percentage of individuals in education increased steadily. The proportion of 20-24 year-olds who were neither in employment nor in education or training (NEET) remained stable at around 17-19% between 2000 and 2014. In 2014, Greece, Italy and Turkey were the only countries where more than 30% of 20-24 year-olds were NEET. Turkey has the highest proportion of NEET, but it is also the only country among these three to show a decrease in the percentage of NEET between 2005 and 2014, from 49.7% in 2005 to 36.3% in 2014. Germany’s share of 20-24 year-old NEET (18.7%) was above the OECD average (17.4%) in 2005, but by 2014, that share fell back to 10.1%, well below the OECD average of 17.9%. In fact, the proportion of 20-24 year-old NEET in Germany is now one of the smallest among OECD countries along with those in Iceland (9.4%), Luxembourg (9.0%), the Netherlands (10.4%) and Norway (10.0%). Women are more often neither in employment nor in education or training than men. Among 20-24 year olds, 19.4% of women and 16.4% of men were NEET in 2014, on average across OECD countries. In Mexico and Turkey, the gender difference in the shares of 20-24 year-olds who were NEET was around 30 percentage points.

166

Comparability The length and the quality of the schooling individuals receive have an impact on students’ transition from education to work; so do labour-market conditions, the economic environment and demographics. National traditions also play an important role. For example, in some countries, young people traditionally complete schooling before they look for work; in others, education and employment are concurrent. In some countries, there is little difference between how young women and men experience their transitions from school to work, while in other countries, significant proportions of young women raise families full-time after leaving the education system and do not enter employment. The ageing of the population in OECD countries should favour employment among young adults, as, theoretically, when older people leave the labour market, their jobs are made available to the young. However, during recessionary periods, high general unemployment rates make the transition from school to work substantially more difficult for young people, as those with more work experience are favoured over new entrants into the labour market. In addition, when labour-market conditions are unfavourable, younger people often tend to stay in education longer, because high unemployment rates drive down the opportunity costs of education. Please note that data for Chile for 2010 refer to 2009 and data for Brazil, Chile and Korea for 2014 refer to 2013. In Israel, the proportion of NEETs in 2014 is not comparable with data from 2010 and previous years.

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • OECD, et al. (2015), African Economic Outlook 2013, OECD Publishing. • OECD (2015), OECD Education Working Papers, OECD Publishing. • OECD (2013), OECD Skills Outlook, OECD Publishing. • OECD (2010), Jobs for Youth, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES YOUTH INACTIVITY

Youth who are not in education nor in employment As a percentage of persons in that age group Youth aged between 15 and 19

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Youth aged between 20 and 24

2000

2005

2010

2014

2000

2005

2010

2014

6.8 .. 6.5 8.2 .. 7.9 2.7 .. .. 7.0 5.7 9.3 8.6 .. 4.4 .. 13.1 8.8 .. .. 18.3 3.7 .. .. 4.5 7.7 26.3 .. 8.0 3.6 7.9 31.2 8.0 7.0 .. 9.4 .. .. .. .. .. ..

7.4 7.0 6.2 6.9 .. 5.3 4.3 5.2 5.2 6.3 4.4 11.7 6.4 .. 4.5 26.4 11.2 8.8 .. 2.2 18.2 3.1 7.2 2.5 1.7 8.4 6.3 4.9 10.9 4.6 7.5 36.1 9.3 6.1 .. 8.2 .. .. .. .. .. ..

8.1 5.5 5.9 8.2 17.0 3.8 5.5 6.1 5.1 7.9 3.7 7.5 4.6 6.2 10.1 23.6 12.5 9.9 8.5 6.3 17.6 3.1 8.6 3.5 3.6 7.4 4.6 3.2 12.8 5.3 4.8 25.6 10.0 7.6 .. 8.3 .. .. .. .. .. ..

7.2 7.2 5.4 7.1 12.7 3.2 3.5 7.0 5.5 7.9 2.9 10.5 6.8 5.5 9.1 7.8 11.2 6.6 7.7 2.4 15.3 3.6 7.1 3.5 4.0 6.1 5.7 4.6 12.1 4.3 4.7 21.0 8.4 7.6 .. 7.2 15.7 .. .. .. .. ..

13.3 .. 16.0 15.9 .. 20.3 6.5 .. .. 17.6 16.9 25.9 22.0 .. 9.7 .. 27.5 .. .. 8.2 27.1 8.2 .. 8.0 30.8 11.0 33.1 .. 15.0 10.7 5.9 44.2 15.4 14.4 .. 17.7 .. .. .. .. .. ..

11.6 12.7 18.3 14.5 .. 16.6 8.3 16.3 13.0 17.8 18.7 21.6 18.9 6.6 12.3 41.5 24.1 .. .. 9.3 27.0 8.1 14.0 9.6 20.1 14.1 25.2 13.0 19.1 12.9 11.9 49.7 16.8 15.5 .. 17.4 .. .. .. .. .. ..

11.2 13.0 18.0 15.7 27.5 13.6 12.1 22.4 15.8 20.6 13.7 21.6 21.5 12.2 26.1 37.4 27.1 .. 23.5 7.5 26.1 7.4 17.7 9.0 17.6 16.4 22.1 9.3 27.0 14.2 11.1 43.7 19.3 19.4 .. 18.8 .. .. .. .. .. ..

13.2 12.0 18.9 14.8 21.1 12.3 12.7 16.1 15.6 18.3 10.1 31.3 20.6 9.4 21.1 18.5 34.8 .. 22.2 9.0 24.9 10.4 14.4 10.0 19.2 23.9 18.6 13.4 29.0 12.0 12.4 36.3 17.0 17.5 .. 17.9 24.0 .. .. .. .. ..

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Youth aged between 20 and 24 who are not in education nor in employment As a percentage of persons in that age group, 2014 Women

Men

Total

60

50

40

30

20

10

0

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HOW MANY STUDENTS STUDY ABROAD? As national economies become more interconnected, governments and individuals are looking to higher education to broaden students’ horizons. By pursuing high level studies in countries other than their own students may expand their knowledge of other cultures and languages, and better equip themselves in an increasingly globalised labour market. Some countries, particularly in the European Union, have established policies and schemes that promote such mobility to foster intercultural contacts and help build social networks.

Definition

classified as “foreign” when they are not citizens of the country where they are enrolled. This includes international students as well as other students who are permanent residents, albeit not citizens, of the countries in which they are studying such as young people from immigrant families.

Comparability Data on international and foreign students refer to the academic year 2012/2013, based on an annual joint data collection by UNESCO, the OECD and Eurostat.

Students are classified as “international” if they left their country of origin for the purpose of study. Students are

Overview OECD countries attract 73% of all students enrolled abroad in countries reporting data to the OECD and the UNESCO Institute for Statistics. Within the OECD area, EU countries host the largest proportion (35%) of international students. At the level of single countries, the United States hosted the largest number of all international students (19% of the total), followed by the United Kingdom (10%), Australia and France (6%), Germany (5%), Canada and Japan (both 3%) and, among the emerging economies with data on foreign students only, Russia (3%). The destinations of international students highlight the attractiveness of specific education systems, whether because of their academic reputation or because of subsequent immigration opportunities. But they can also reflect language as well as cultural considerations, geographic proximity and the similarities between some education systems. Students from Asia form the largest group of international students enrolled in countries reporting data: 53% or the total in all reporting destinations. In particular, students from China account for 22% of all international students enrolled in tertiary education in the OECD area, the highest share among all reporting countries. The share of international students within total enrolment depends on the level of education. On average across OECD countries, international students represent 6% of the students enrolled in programmes at the bachelor’s or equivalent level, but this proportion is 14% at the master’s or equivalent level and 24% at the doctoral or equivalent level. Trends in the number of foreign students worldwide, computed until 2012, reveal that this number has been steadily increasing. The number of students enrolled in a country of which they are not citizens increased by 50% (from 3 to 4.5 million) between 2005 and 2012.

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Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • Keeley, B. (2009), International Migration: The Human Face of Globalisation, OECD Insights, OECD Publishing. • OECD (2013), Higher Education in Regional and City Development, OECD Publishing. • OECD (2013), Higher Education Management and Policy, OECD Publishing. • OECD (2013), How is international student mobility shaping up?, OECD publishing. • OECD (2008), Tertiary Education for the Knowledge Society, OECD Review of Tertiary Education, OECD Publishing. • OECD (2004), Internationalisation and Trade in Higher Education: Opportunities and Challenges, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES HOW MANY STUDENTS STUDY ABROAD?

International student mobility and foreign students in tertiary education As a percentage of all students (international plus domestic), 2013 International students Total tertiary education Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

18.0 16.8 10.0 9.0 0.3 .. 10.1 2.9 7.1 9.8 7.1 .. 5.8 6.5 6.4 .. .. 3.5 .. 43.5 0.2 10.2 16.1 3.6 1.5 3.9 4.9 2.6 2.9 5.8 16.8 .. 17.5 3.9 .. 8.6 .. .. .. .. .. ..

Foreign students

Short-cycle tertiary programmes

Bachelor’s or equivalent level

Master’s or equivalent level

Doctoral or equivalent level

12.2 1.5 5.9 9.0 0.1 .. 13.3 .. 0.0 4.2 0.0 .. 0.5 20.6 2.1 .. .. 3.6 .. 15.5 0.0 1.5 20.7 5.4 0.0 .. 0.5 0.9 5.5 0.2 .. .. 5.0 1.8 .. 5.1 .. .. .. .. .. ..

14.0 19.7 7.7 7.3 0.1 .. 5.8 2.2 5.0 7.6 4.4 .. 3.7 5.9 5.8 .. .. 2.6 .. 24.4 0.2 8.4 13.1 1.8 1.1 2.6 3.7 2.3 0.8 2.4 10.1 .. 13.2 3.2 .. 6.2 .. .. .. .. .. ..

37.9 19.3 16.1 13.0 2.5 .. 17.6 4.0 11.5 13.1 11.7 .. 14.4 5.6 10.2 .. .. 7.6 .. 67.1 0.7 17.4 20.3 7.0 2.2 4.7 6.3 3.6 4.9 9.3 27.4 .. 36.1 8.2 .. 13.9 .. .. .. .. .. ..

33.0 27.5 37.7 25.6 3.4 .. 29.5 7.2 16.8 39.9 7.1 .. 7.5 19.8 25.3 .. .. 18.8 .. 84.1 2.6 37.8 43.3 20.9 1.6 15.0 8.6 7.6 16.2 31.5 52.1 .. 41.4 32.4 .. 23.9 .. .. .. .. .. ..

Total tertiary education

Short-cycle tertiary programmes

.. .. .. .. .. 9.4 .. .. .. .. .. .. .. .. .. .. 4.4 .. 1.7 .. .. .. .. .. .. .. .. .. .. .. .. 1.1 .. .. .. .. .. 0.3 .. .. 1.7 ..

Bachelor’s or equivalent level

.. .. .. .. .. 4.2 .. .. .. .. .. .. .. .. .. .. 5.4 .. 0.2 .. .. .. .. .. .. .. .. .. .. .. .. 0.3 .. .. .. .. 0.3 0.0 .. .. 0.8 ..

Master’s or equivalent level

Doctoral or equivalent level

.. .. .. .. .. 11.4 .. .. .. .. .. .. .. .. .. 4.2 4.0 .. 6.2 .. .. .. .. .. .. .. .. .. .. .. .. 3.7 .. .. .. .. .. 1.0 .. .. 3.1 ..

.. .. .. .. .. 12.8 .. .. .. .. .. .. .. .. .. 4.6 12.5 .. 7.7 .. .. .. .. .. .. .. .. .. .. .. .. 4.5 .. .. .. .. .. 2.4 .. .. 3.9 ..

.. .. .. .. .. 8.1 .. .. .. .. .. .. .. .. .. 3.1 4.4 .. 1.5 .. .. .. .. .. .. .. .. .. .. .. .. 1.1 .. .. .. .. 0.2 0.4 .. .. .. ..

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Distribution of foreign and international students in tertiary education 2013

By country of destination

By country of origin Oceania 1%

Other nonOECD countries 20%

Turkey 1% Korea 1% Spain 1% Saudi Arabia 2% Netherlands 2% Austria 2% Italy 2% China 2%

North America 3% Latin America and the Caribbean 5%

United States 19%

United Kingdom 10%

Other OECD countries 10%

Not specified 5%

Asia 53%

Africa 8%

Australia 6% Europe 10% France 6%

Canada 3%

Japan 3%

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EDUCATIONAL ATTAINMENT Educational attainment is a commonly used proxy for the stock of human capital – say, the skills available in the population and the labour force. As globalisation and technology continue to re-shape the needs of labour markets worldwide, the demand for individuals with a broader knowledge base and more specialised skills, e.g. advanced analytical capacities, and complex communication skills, continues to rise. As a result, more individuals are pursuing higher levels of education now than in previous generations, leading to significant shifts in attainment levels over time within countries.

Definition Educational attainment refers to the highest level of education completed by a person, shown as a percentage of all persons in that age group. Below upper secondary education includes early childhood education, primary education or lower secondary education. Programmes at the lower secondary education level are designed to lay the foundation across a wide range of subjects. Programmes at the upper secondary level are more specialised and offer students more choices and diverse pathways for completing their secondary education. Tertiary education includes short-cycle tertiary education, bachelor’s, master’s, or doctoral or equivalent levels.

Comparability The International Standard Classification of Education (ISCED 2011) is used to define the levels of education in a comparable way across countries. The ISCED 2011 Operational Manual: Guidelines for Classifying National Education Programmes and Related Qualifications describes ISCED 2011 education programmes and attainment levels and examples for each country. Note that data for Brazil, Chile, France and Russia for 2014 refer to 2013 and for South Africa to year 2012. Data for Indonesia for 2014 refer to 2011 and data for 2010 refer to 2006. In the United Kingdom, data for upper secondary attainment include completion of a sufficient volume and standard of programmes that would be classified individually as completion of intermediate upper secondary programmes (18% of the adults are under this group).

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications

Overview An indication of long-term trends in educational attainment can be obtained by comparing the current attainment levels of younger and older adults. Tertiary attainment levels have increased considerably over the past 30 years. On average across OECD countries, 41% of 25-34 year-olds have a tertiary attainment, compared with 25% of 55-64 year-olds. Canada, Korea and Russia lead in the proportion of young adults (25-34 year-olds) with a tertiary attainment, with 55% or more having reached this level of education. In Ireland, Korea and Poland, there is a difference of 25 percentage points or more between the proportion of young adults and older adults who have attained this level of education. In 2014, over 30% of the population aged between 25 and 64 has attained tertiary level education in more than half of the OECD countries. On average across OECD countries, 24% of adults now have only primary or lower secondary levels of education, 43% have upper secondary education and 34% have a tertiary qualification.

170

• OECD (2016), Trends Shaping Education, OECD Publishing. • OCDE (2015), Reviews of National Policies for Education, OECD Publishing. • OECD (2012), Let’s Read Them a Story! The Parent Factor in Education, PISA, OECD Publishing.

Statistical publications • OECD (2014), Highlights from Education at a Glance, OECD Publishing.

Methodological publications • OECD (2004), OECD Handbook for Internationally Comparative Education Statistics: Concepts, Standards, Definitions and Classifications, OECD Publishing. • OECD/Eurostat/UNESCO Institute for Statistics (2015), ISCED 2011 Operational Manual: Guidelines for Classifying National Education Programmes and Related Qualifications, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Centre for Educational Research and Innovation (CERI), www.oecd.org/edu/ceri. • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • OUTCOMES EDUCATIONAL ATTAINMENT

Educational attainment As a percentage of total population in that age group Population aged 25-34 Below upper secondary

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Population aged 25-64

Upper secondary or post-secondary non-tertiary

Tertiary

Below upper secondary

Upper secondary or post-secondary non-tertiary

Tertiary

2000

2014

2000

2014

2000

2014

2000

2014

2000

2014

2000

2014

31.7 .. 24.7 11.7 .. 7.6 13.1 9.0 13.7 23.6 15.1 31.3 18.7 .. 27.0 .. 43.6 .. 6.7 31.8 62.9 25.7 31.3 6.6 10.6 68.2 6.3 14.6 44.6 12.7 10.2 72.3 33.2 11.8 .. 24.8 .. 93.9 .. .. .. ..

13.3 10.0 17.7 7.4 20.0 5.4 17.8 11.0 9.8 14.7 12.7 18.3 13.0 26.2 9.9 9.2 26.2 .. 1.7 13.1 54.4 14.8 18.9 18.6 5.8 35.3 7.5 6.1 34.4 18.2 9.0 50.5 13.8 10.0 .. 16.8 39.2 .. .. 60.0 5.2 22.6

36.9 .. 39.3 39.9 .. 81.2 57.6 59.7 47.6 45.0 62.6 44.8 66.6 .. 43.2 .. 46.0 .. 56.4 45.3 19.6 47.7 .. 58.5 75.2 18.9 82.5 66.1 21.3 53.6 64.2 18.9 37.9 50.1 .. 49.5 .. 6.1 .. .. .. ..

38.6 51.6 38.0 34.9 52.7 64.7 40.0 48.6 49.9 41.2 58.9 43.0 54.9 33.2 39.3 44.8 49.7 .. 30.6 33.9 21.0 40.9 40.7 32.4 51.6 33.2 62.6 55.8 24.1 35.9 45.0 24.7 37.1 44.3 .. 42.4 45.5 .. .. 29.7 36.6 72.1

31.4 .. 36.0 48.4 .. 11.2 29.3 31.3 38.7 31.4 22.3 23.9 14.7 .. 29.8 .. 10.4 .. 36.9 22.9 17.5 26.6 .. 34.9 14.2 12.9 11.2 19.3 34.1 33.6 25.6 8.9 28.9 38.1 .. 25.9 .. .. .. .. .. ..

48.1 38.4 44.2 57.7 27.3 29.9 42.1 40.4 40.3 44.1 28.4 38.7 32.1 40.6 50.8 46.0 24.2 .. 67.7 52.9 24.6 44.3 40.4 49.0 42.6 31.4 29.8 38.1 41.5 46.0 46.0 24.8 49.2 45.7 .. 40.8 15.3 .. .. 10.3 58.2 5.2

41.2 .. 41.5 19.3 .. 14.1 20.2 15.3 26.8 37.8 18.3 50.7 30.8 .. 42.7 .. 57.9 .. 31.7 39.1 70.9 35.1 36.8 14.8 20.1 80.6 16.2 25.2 61.7 22.4 16.1 76.7 37.4 12.6 .. 35.0 .. 95.4 .. .. .. ..

22.9 16.1 26.4 10.0 38.6 6.8 20.4 8.9 13.5 25.2 13.1 31.7 16.9 26.7 21.2 14.6 40.7 .. 15.0 18.0 66.3 24.1 25.9 18.1 9.5 56.7 9.2 14.3 43.4 18.4 12.0 64.4 20.8 10.4 .. 23.6 53.6 .. .. 69.0 5.3 35.1

31.3 .. 31.4 40.6 .. 75.0 54.0 55.8 40.5 40.7 58.2 31.6 55.2 .. 35.7 .. 32.7 .. 44.4 42.6 14.5 41.5 .. 56.8 68.5 10.5 73.4 59.1 15.7 47.4 59.7 14.9 36.9 50.9 .. 43.6 .. 4.6 .. .. .. ..

35.2 54.0 36.7 36.4 40.3 71.7 43.8 53.6 44.7 42.7 59.8 40.2 59.7 36.2 37.8 36.8 42.4 .. 40.4 36.0 15.1 41.5 38.4 40.2 63.5 21.6 70.5 57.1 21.9 42.9 47.8 18.9 36.9 45.3 .. 42.7 32.7 .. .. 22.5 40.4 58.3

27.5 .. 27.1 40.1 .. 11.0 25.8 28.9 32.6 21.6 23.5 17.7 14.0 .. 21.6 .. 9.4 .. 23.9 18.3 14.6 23.4 .. 28.4 11.4 8.8 10.4 15.7 22.6 30.1 24.2 8.3 25.7 36.5 .. 21.5 .. .. .. .. .. ..

41.9 29.9 36.9 53.6 21.1 21.5 35.8 37.5 41.8 32.1 27.1 28.1 23.4 37.1 41.0 48.5 16.9 .. 44.6 45.9 18.5 34.4 35.6 41.8 27.0 21.7 20.4 28.6 34.7 38.7 40.2 16.7 42.2 44.2 .. 33.6 13.7 .. .. 8.5 54.3 6.6

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Population that has attained tertiary education Percentage, 2014 25-34

55-64

70 60 50 40 30 20 10 0

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TEACHERS’ SALARIES Resources

Teachers’ salaries represent the largest single cost in formal education and have a direct impact on the attractiveness of the teaching profession. They influence decisions to enrol in teacher education, become a teacher after graduation, return to the teaching profession after a career interruption, and/or remain a teacher (as, in general, the higher the salaries, the fewer the people who choose to leave the profession).

Definition Salary structures usually define the salaries paid to teachers at different points in their careers. Deferred compensation, which rewards employees for staying in organisations or professions and for meeting established performance criteria, is also used in teachers’ salary structures. OECD data on teachers’ salaries are limited to information on statutory salaries at four points of the salary scale: starting salaries, salaries after 10 years of service, salaries after 15 years of experience, and salaries at the top of the scale. Salaries are for those teachers who

h a v e t h e ty p i c a l q u a l i f i c a t i o n ( i . e . t h a t h a v e t h e qualification held by the largest proportion of teachers across the teaching force). Qualifications beyond the minimum required to enter the teaching profession can lead to wage increases in some countries.

Comparability Teachers’ statutory salaries are one component of teachers’ total compensation. Other benefits, such as regional allowances for teaching in remote areas, family allowances, reduced rates on public transport and tax allowances on the purchase of cultural materials, may also form part of teachers’ total remuneration. There are also large differences in taxation and social-benefits systems in OECD countries. All this should be borne in mind when comparing salaries across countries. In most OECD countries, teachers’ salaries increase with the level of education they teach.

Overview Teachers’ salaries vary widely across countries. The salaries of lower secondary school teachers with 15 years of experience and typical qualification range from less than USD 15 000 in Estonia, Hungary, to more than USD 60 000 in Canada, Germany, the Netherlands and the United States and exceed USD 100 000 in Luxembourg. Between 2000 and 2013, teachers’ salaries rose, in real terms, in all countries with available data, except Denmark (upper secondary), France and Italy. However, in most countries, salaries increased less since 2005 than between 2000 and 2005. Salaries at the top of the scale for teachers with typical qualifications are, on average, 64%, 66%, 65% and 66% higher, respectively, than starting salaries in preprimary, primary, lower secondary and upper secondary education. The difference tends to be greatest when it takes many years to progress through the scale. In countries where it takes 30 years or more to reach the top of the salary scale, salaries at that level can be more than 90% higher, on average, than starting salaries.. On average across OECD countries with available data, teachers’ salaries decreased, for the first time since 2000, by around 5% at all levels of education between 2009 and 2013. The economic downturn may also have an influence on the supply of teachers. In general, when the general economy is weak, and there is high unemployment among graduates and low graduate earnings, teaching might seem to be a more attractive job choice than other occupations.

172

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2013), PISA 2012 Results: What Makes Schools Successful? Resources, Policies and Practices (Volume IV), PISA, OECD Publishing. • OECD (2012), Preparing teachers and developing school leaders for the 21st century: Lessons from Around the World, OECD Publishing. • Schleicher, A. (2011), Building a High-Quality Teaching Profession: Lessons from around the World, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. • TALIS (OECD Teaching and Learning International Survey), www.oecd.org/talis. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • RESOURCES TEACHERS’ SALARIES

Teachers’ statutory salaries at different points in their careers Primary education 2005 = 100

Equivalent USD using PPPs

Change in salary after 15 years experience

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Starting salary

Salary after 10 years experience

Salary after 15 years experience

Salary at top of scale

2000

2013

2013

2013

2013

2013

.. 91.0 .. .. .. .. 93.8 85.3 87.4 104.8 .. .. 63.1 .. 83.2 99.5 94.5 .. .. .. 87.3 .. .. .. .. .. .. 86.2 .. .. .. 99.4 .. 82.0 .. 89.4 .. .. .. .. .. ..

111.1 101.2 .. .. .. .. 101.9 131.4 107.2 93.8 107.9 74.1 67.7 88.5 109.1 126.4 93.9 93.9 96.9 139.9 109.0 .. .. 114.9 121.8 84.8 .. 100.0 95.2 109.2 .. 114.2 .. 98.4 .. 102.8 .. .. .. .. .. ..

39 177 32 610 .. 39 608 17 733 17 033 45 860 13 004 32 356 27 254 51 389 17 760 10 647 26 046 34 899 19 806 27 509 27 627 29 357 68 873 15 944 36 456 29 124 41 177 15 220 30 806 11 116 25 134 36 422 32 991 .. 25 295 .. 41 606 .. 29 807 .. .. .. .. .. ..

56 335 38 376 .. 63 557 23 736 17 529 50 958 13 233 37 453 31 229 60 449 22 460 12 177 29 165 50 248 25 732 30 262 41 036 44 193 91 203 20 779 45 228 43 292 44 538 20 402 33 740 13 351 31 077 39 468 36 817 .. 26 107 .. 53 799 .. 37 795 .. .. .. .. .. ..

56 335 43 015 .. 66 702 26 610 18 273 52 672 13 233 39 701 33 500 63 221 25 826 13 061 31 145 56 057 29 869 33 230 48 546 51 594 102 956 26 533 54 001 43 292 44 538 24 921 36 663 15 650 38 261 42 187 38 175 .. 27 139 .. 59 339 .. 41 245 .. .. .. .. .. ..

56 521 64 014 .. 66 702 37 110 20 795 52 672 17 015 42 083 49 398 67 413 34 901 17 362 31 145 63 165 51 855 40 437 60 878 82 002 123 406 34 048 54 001 43 292 48 662 25 980 57 201 16 869 45 764 51 265 43 595 .. 29 342 .. 66 938 .. 48 706 .. .. .. .. .. ..

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Age distribution of teachers in secondary education 2013 Less than 30

30-39

40-49

50-59

60 or over

100 90 80 70 60 50 40 30 20 10 0

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EDUCATIONAL EXPENDITURE Expenditure on education is an investment that can foster economic growth, enhance productivity, contribute to personal and social development and reduce social inequality. The proportion of total financial resources devoted to education is one of the key choices made by governments, enterprises, students and their families. The demand for high-quality education, which can translate into higher costs per student, must be balanced against other demands on public expenditure and the overall tax burden. Policy makers must also balance the importance of improving the quality of educational services with the desirability of expanding access to educational opportunities.

use of a common survey and definitions ensures good comparability of results across countries. The level of expenditure on educational institutions is affected by the size of a country’s school age population, enrolment rates, level of teachers’ salaries, and the organisation and delivery of instruction. At the primary and lower secondary levels of education (corresponding broadly to the 5-14 year-old population), enrolment rates are close to 100% in OECD countries, and changes in the number of students are closely related to demographic changes. This is not as much the case in upper secondary and tertiary education, because part of the concerned population has left the education system.

Definition Expenditure on institutions is not limited to expenditure on instruction services but includes public and private expenditure on ancillary services for students and their families, where these services are provided through educational institutions. In principle, public expenditure includes both direct expenditure on educational institutions and educational related public subsidies to households administered by educational institutions. Private expenditure is recorded net of these public subsidies attributable to educational institutions; it also excludes expenditure made outside educational institutions (such as textbooks purchased by families, private tutoring for students and student living costs).

Comparability Expenditure data were obtained by a special survey conducted in 2012 which applied consistent methods and definitions. Expenditure data are based on the definitions and coverage for the UNESCO-OECD-Eurostat data collection programme on education; they have been adjusted to 2012 prices using the GDP price deflator. The

Overview In 2012, primary, secondary and post-secondary nontertiary education accounted for more than two thirds of expenditure on educational institutions, or 3.7% of the GDP, on average across OECD countries. New Zealand spent more than 5% of its GDP on these levels of education, while the Czech Republic, Hungary, Indonesia, Latvia, Russia and Turkey spent 3% or less. In 2012, the OECD average level of annual expenditure per student for primary, secondary and post-secondary non-tertiary education was USD 8 982. Between 2000 and 2012, a period of relatively stable student enrolment at these levels, spending per student increased in every country, rising by 35% on average.

174

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2016), Trends Shaping Education, OECD Publishing. • OECD (2015), Reviews of National Policies for Education, OECD Publishing.

Methodological publications • OECD/Eurostat/UNESCO Institute for Statistics (2015), ISCED 2011 Operational Manual: Guidelines for Classifying National Education Programmes and Related Qualifications, OECD Publishing. • UNESCO Institute for Statistics (UIS), OECD and Eurostat (2013), UOE Data Collection on Education Systems, UIS, Montreal.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • RESOURCES EDUCATIONAL EXPENDITURE

Expenditure on primary, secondary, post-secondary non tertiary institutions Annual expenditure per student (USD converted using PPPs for GDP) Primary

Secondary Lower secondary Upper secondary

All secondary

2005 = 100

As a percentage of total expenditure

Primary, secondary, post-secondary non tertiary institutions

Primary, secondary, post-secondary non tertiary institutions Public sources

Private sources

2012

2012

2012

2000

Change in expenditure 2012

Change in number of students 2000

2012

Change in expenditure per student 2000

2012

2012

2012

10 574 13 632 11 670 .. 4 312 7 902 11 460 6 524 12 909 9 588 9 521 .. 4 459 10 706 11 087 .. 8 905 9 976 7 008 20 247 2 367 12 227 8 644 13 373 6 682 8 524 5 283 9 802 9 137 10 966 16 370 2 448 10 271 11 856 .. 9 627 2 981 915 .. ..

9 581 14 013 12 210 11 695 3 706 7 119 9 959 7 013 8 599 13 070 12 599 .. 4 386 7 541 11 564 .. 8 684 10 360 9 651 20 962 4 160 12 368 10 262 15 248 6 419 8 888 5 027 6 898 9 145 11 329 17 024 3 524 9 963 13 059 .. 9 876 3 078 1 067 .. ..

10 165 13 806 12 025 .. 3 909 7 469 10 632 6 791 9 985 11 046 10 650 .. 4 419 8 724 11 298 5 689 8 774 10 170 8 355 20 617 3 007 12 296 9 409 14 450 6 540 8 691 5 152 8 022 9 141 11 177 16 731 2 904 10 085 12 442 .. 9 518 3 020 981 5 345 2 440

82.6 .. .. 83.7 95.8 76.8 86.1 .. 82.6 99.3 .. 77.2 68.4 72.9 69.0 99.2 96.4 98.5 68.9 .. 80.4 82.3 .. 86.8 89.8 99.6 73.6 .. 92.3 88.3 86.6 71.0 .. 86.2 .. 84.4 65.8 .. 65.7 ..

130.2 .. 114.7 114.7 139.5 113.7 80.7 105.0 112.2 104.2 .. .. 75.2 98.5 138.5 154.0 89.6 106.3 125.2 96.4 118.7 113.1 .. 112.5 124.6 122.6 124.7 97.6 110.4 102.7 110.5 164.8 112.1 104.2 .. 113.9 181.7 .. 150.7 ..

92.9 .. 90.9 99.1 98.6 107.4 95.1 121.2 95.4 101.8 .. 100.5 104.3 94.4 97.0 94.1 98.6 109.2 102.1 .. 94.6 96.7 .. 94.5 109.7 111.0 108.1 .. 106.9 98.4 100.1 92.5 112.6 97.7 .. 100.9 98.2 .. .. ..

106.2 .. 96.5 96.4 89.6 84.8 .. 80.7 98.1 100.7 .. .. 90.5 100.2 109.4 111.8 99.3 94.2 86.3 .. 107.2 101.4 .. 103.8 77.0 97.4 78.6 89.3 107.4 91.0 96.6 106.6 103.7 99.5 .. 96.6 86.5 .. 87.8 ..

88.9 .. .. 84.4 97.2 71.5 90.5 .. 86.6 97.5 .. .. 65.5 77.2 71.2 105.5 97.8 90.3 67.5 .. 85.0 85.1 .. 91.8 81.9 89.7 68.1 .. 86.4 89.7 86.5 76.7 .. 88.2 .. 84.5 67.0 .. .. ..

122.6 .. 118.9 118.9 155.7 134.2 .. 130.1 114.4 103.4 .. .. 83.1 98.4 126.6 137.7 90.2 112.8 145.1 .. 110.7 111.6 .. 108.3 161.9 125.8 158.7 109.2 102.8 112.9 114.3 154.7 108.1 104.8 .. 120.6 210.0 .. 171.7 ..

82.4 96.0 96.3 91.0 78.0 91.0 97.2 99.1 99.3 91.0 86.5 .. 94.2 96.0 95.7 88.9 95.5 92.9 83.9 97.8 82.8 86.7 82.5 .. 92.0 85.2 88.1 91.0 88.7 100.0 88.5 85.4 84.0 92.0 .. 90.6 .. 90.6 96.7 ..

17.6 4.0 3.7 9.0 22.0 9.0 2.8 0.9 0.7 9.0 13.5 .. 5.8 4.0 4.3 11.1 4.5 7.1 16.1 2.2 17.2 13.3 17.5 .. 8.0 14.8 11.9 9.0 11.3 0.0 11.5 14.6 16.0 8.0 .. 9.4 .. 9.4 3.3 ..

2012 Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil Indonesia Russian Federation South Africa

7 705 9 563 9 581 9 680 4 476 4 728 10 953 5 668 8 316 7 013 7 749 .. 4 370 10 003 8 681 6 931 7 924 8 595 7 395 20 020 2 632 8 185 7 069 12 728 6 721 6 105 5 415 9 015 7 111 10 312 13 889 2 577 10 017 11 030 .. 8 247 3 095 1 180 .. 2 431

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Total public expenditure on primary to tertiary education, change between 2008 and 2012 As a percentage of total public expenditure, 2008 = 100, 2012 constant prices Change in public expenditure on education Change in public expenditure for all services Change in total public expenditure on education as a percentage of total public expenditure 135 130 125 120 115 110 105 100 95 90 85 80 75 70

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EXPENDITURE IN TERTIARY EDUCATION Educational institutions in OECD countries are mainly publicly funded, although there are substantial and growing levels of private funding at the tertiary level. At this level, the contribution to the costs of education by individuals and other private entities is more and more considered an effective way to ensure funding is available to students regardless of their economic backgrounds.

work-based training of apprentices and students is also taken into account.

Definition

The data on expenditure were obtained by a survey conducted in 2011 which applied consistent methods and definitions. Expenditure data are based on the definitions and coverage for the UNESCO-OECD-Eurostat data collection programme on education; they have been adjusted to 2012 prices using the GDP price deflator. The use of a common survey and definitions ensures good comparability of results across countries.

Covered are public and private expenditure on schools, universities and other private institutions delivering or supporting educational services. Other private entities include private businesses and non-profit organisations, e.g. religious organisations, charitable organisations and business and labour associations. Expenditure by private companies on the work-based element of school- and

Overview In 2012, the average level of expenditure per tertiary student, across OECD countries, was USD 15 028. Spending per student at tertiary level ranged from USD 8 000 or less in Chile, Indonesia, Latvia, South Africa and Turkey to more than USD 20 000 in Canada, Norway, Sweden, Switzerland, the United Kingdom, and the United States and even more than USD 30 000 in Luxembourg.

Private expenditure is recorded net of public subsidies to educational institutions; it also includes expenditures made outside educational institutions.

Comparability

Educational expenditure in national currency for 2012 is converted into equivalent USD by dividing the national currency figure by the purchasing power parity (PPP) index for GDP. PPPs are used because market exchange rates are affected by many factors that are unrelated to the purchasing power of currencies in different countries.

Expenditure on tertiary education amounts to more than 1.5% of GDP in more than half of all countries, and exceeds 2.0% in Canada (2.5%), Chile (2.5%), Korea (2.3%) and the United States (2.8%). Five countries devote less than 1% of GDP to tertiary education, namely Brazil (0.9%), Italy (0.9%), Indonesia (0.8%), Luxembourg (0.4%) and South Africa (0.7%). High private returns to tertiary education suggest that a greater contribution to the costs of education by individuals and other private entities may be justified, as long as there are ways to ensure that funding is available to students regardless of their economic backgrounds. The proportion of expenditure on tertiary institutions covered by individuals, businesses and other private sources, including subsidised private payments, ranges from 5% or less in Finland and Norway (tuition fees charged by tertiary institutions are low or negligible in these countries), to more than 40% in Australia, Canada, Chile, Hungary, Israel, Japan Korea, New Zealand, the United Kingdom and the United States, and to over 70% in Korea. Of these countries, in Korea and the United Kingdom, most students are enrolled in private institutions (around 80% in private universities in Korea; 100% in government-dependent private institutions in the United Kingdom).

176

Sources • OECD (2015), Education at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2016), Trends Shaping Education, OECD Publishing. • OECD (2015), Reviews of National Policies for Education, OECD Publishing. • OECD (2014), Higher Education Management and Policy, OECD Publishing.

Methodological publications • OECD/Eurostat/UNESCO Institute for Statistics (2015), ISCED 2011 Operational Manual: Guidelines for Classifying National Education Programmes and Related Qualifications, OECD Publishing.

Online databases • OECD Education Statistics.

Websites • OECD Education at a Glance (supplementary material), www.oecd.org/education/education-at-a-glance-19991487.htm. OECD FACTBOOK 2015-2016 © OECD 2016

EDUCATION • RESOURCES EXPENDITURE IN TERTIARY EDUCATION

Expenditure on tertiary institutions Annual expenditure per student by educational institutions for all services (USD converted using PPPs for GDP) Tertiary (including R&D activities), 2012 Bachelor’s, Short-cycle tertiary master’s, doctoral or equivalent level Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil Indonesia Russian Federation South Africa

8 267 15 071 8 212 15 348 4 186 16 645 .. .. .. 12 346 8 265 .. 2 897 9 665 .. 6 366 .. 10 532 5 540 3 749 .. 11 580 10 289 .. 8 229 .. .. 6 874 9 394 5 897 .. .. .. .. .. 8 968 .. .. 5 183 ..

18 795 15 641 15 785 25 525 9 409 10 304 .. 8 206 17 863 16 279 17 159 .. 9 658 9 373 .. 13 777 10 071 18 557 11 173 34 739 .. 19 305 14 543 20 016 9 811 9 196 9 022 11 615 13 040 24 025 .. .. .. .. .. 15 111 .. .. 9 115 ..

All tertiary 16 859 15 549 15 503 22 006 7 960 10 319 .. 8 206 17 863 15 281 17 157 .. 8 876 9 377 14 922 12 338 10 071 16 872 9 866 32 876 8 115 19 276 13 740 20 016 9 799 9 196 9 022 11 002 12 356 22 534 25 264 7 779 24 338 26 562 .. 15 028 10 455 2 089 8 363 10 885

All tertiary excluding R&D activities 2012 10 455 11 616 10 156 15 788 7 600 6 807 .. 4 690 10 728 10 361 10 025 .. 7 405 .. 11 418 7 710 6 369 .. 8 026 21 358 6 647 12 505 10 841 12 010 7 692 4 917 6 191 8 888 8 983 10 589 11 632 5 557 18 593 23 706 .. 10 309 9 595 .. 7 641 ..

2005 = 100 Change in expenditure

As a percentage of total expenditure

Change in number of students Change in expenditure per student Public sources

Private sources

2000

2012

2000

2012

2000

2012

2012

2012

83.5 .. .. 83.6 84.4 65.3 86.5 .. 87.6 93.0 .. 42.0 80.5 69.9 102.4 82.7 93.0 93.7 78.6 .. 73.5 84.6 .. 83.2 57.7 71.4 66.9 .. 87.0 86.7 76.4 76.8 .. 78.1 .. 79.6 78.9 .. 44.3 ..

132.6 .. 123.6 113.0 186.8 172.2 .. 158.0 117.5 118.7 .. .. 79.0 107.2 125.3 117.1 107.3 114.2 142.1 .. 135.3 124.9 .. 108.2 112.9 102.9 151.7 103.0 116.9 121.0 111.2 192.8 .. 124.5 .. 126.7 148.8 .. 141.9 ..

.. .. 94.4 .. 73.1 72.3 97.8 85.5 95.0 95.3 .. 67.5 63.9 67.6 85.2 80.2 89.7 98.9 93.4 .. 82.8 85.3 .. 87.8 59.7 90.4 71.3 .. 107.5 82.3 75.6 71.9 93.4 88.6 .. 83.6 70.4 .. .. ..

132.8 .. 119.4 .. 177.6 129.6 .. 96.8 99.9 104.1 .. .. 93.1 119.7 113.6 114.4 94.4 96.0 103.1 .. 133.3 122.5 .. 103.5 88.4 108.3 117.0 94.8 117.5 101.9 128.0 158.6 105.1 129.7 .. 114.9 160.5 .. 142.3 ..

.. .. .. .. 115.5 90.2 88.5 .. 92.2 97.6 .. 62.1 126.0 103.4 120.2 103.1 103.8 94.8 84.2 .. 88.8 99.2 .. 94.8 96.7 79.0 93.8 .. 80.9 105.3 101.1 106.9 .. 88.2 .. 96.5 112.1 .. .. ..

99.8 .. 103.5 .. 105.2 132.9 .. 163.3 117.6 114.0 .. .. 84.9 89.6 110.3 102.4 113.7 119.0 137.9 .. 101.5 101.9 .. 104.5 127.7 94.9 129.6 108.7 99.5 118.7 86.9 121.5 .. 96.0 .. 111.0 92.7 .. 99.7 ..

44.9 95.3 89.9 54.9 34.6 79.3 .. 78.2 96.2 79.8 85.9 .. 54.4 90.6 81.8 52.4 66.0 34.3 29.3 94.8 69.7 70.5 52.4 96.1 77.6 54.3 73.8 86.1 73.1 89.3 .. 80.4 56.9 37.8 .. 69.7 .. 70.7 63.5 ..

55.1 4.7 10.1 45.1 65.4 20.7 .. 21.8 3.8 20.2 14.1 .. 45.6 9.4 18.2 47.6 34.0 65.7 70.7 5.2 30.3 29.5 47.6 3.9 22.4 45.7 26.2 13.9 26.9 10.7 .. 19.6 43.1 62.2 .. 30.3 .. 29.3 36.5 ..

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Share of public expenditure on tertiary institutions Percentage 2012

2005

100 90 80 70 60 50 40 30 20 10 0

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GOVERNMENT GOVERNMENT DEFICITS AND DEBT GOVERNMENT EXPENDITURES, REVENUES AND DEFICITS GOVERNMENT DEBT

GENERAL GOVERNMENT EXPENDITURES ACROSS LEVELS OF GOVERNMENT GENERAL GOVERNMENT EXPENDITURES AND REVENUES PER CAPITA GENERAL GOVERNMENT PRODUCTION COSTS

PUBLIC EXPENDITURE SOCIAL EXPENDITURE PENSION EXPENDITURE OFFICIAL DEVELOPMENT ASSISTANCE

TAXES TAXES ON THE AVERAGE WORKER TOTAL TAX REVENUE

GOVERNMENT • GOVERNMENT DEFICITS AND DEBT

GOVERNMENT EXPENDITURES, REVENUES AND DEFICITS Government deficits and debt

Net lending reflects the fiscal position of government after accounting for capital expenditures. Positive net lending means that government is providing financial resources to other sectors and negative net lending means that government requires financial resources from other economic sectors. While general government net lending is an important concept in the System of National Accounts (SNA) accounting framework and provides the basis for sound international comparisons, net lending is not necessarily the key fiscal measure targeted by governments. Some countries for example manage their budgets using broader notions that incorporate the positions of public corporations and others focus on more narrow concepts such as central government.

Definition Total general government expenditures include the following items: intermediate consumption; compensation of employees, subsidies, social benefits and social transfers in kind (via market producers); other current transfers; property income; capital transfers (payable); the adjustment for the net equity of households in pension funds reserves; gross capital formation; and net acquisition of non-financial non-produced assets. It also includes taxes on income and wealth and other taxes on production that governments may be required to pay. Revenues include taxes (on corporations and households, and those on income, wealth, production and imports),

social security contributions, property income and other income.

Comparability The biggest issue affecting comparability across countries concerns the scope of the government sector. In many countries, hospitals, for example, are classified outside of the government sector and are instead recorded as public corporations on the grounds that they charge market prices for their services. EU countries have adopted a 50% rule, i.e. sales should cover at least 50% of the operating costs to qualify the relevant units as market producers outside government. Another potential area where comparability may be affected relates to the determination of public ownership. The SNA requires that “control” be the determining factor for recording a non-market producer inside or outside government, and describes a number of criteria that can be used to assess this requirement. Recognising that this is non-trivial it includes a practical recommendation that a 50% rule relating to ownership should be adopted. Generally however, the comparability of figures for countries is very high. For most general government expenditures there is little scope for ambiguity in treatment and the quality of underlying data is very good, so the level of comparability is good. Data for all countries are on a consolidated basis, except Canada (which consolidates only current transfers) and New Zealand.

Overview Since the onset of the financial crisis, most OECD countries have recorded fiscal deficits. In 2010, deficits larger than 10% of GDP were recorded for Ireland, the United States, Greece and Portugal. The large deficit in Ireland of 32.3% partly reflected one-off payments to support the financial system. In contrast, four countries recorded surpluses, most notably in Norway (at 11%). In 2014, fiscal balances improved in most OECD countries for which data are available. Two countries had deficits greater than 7.0%: Japan (minus 8.5%) and Portugal (minus 7.2%) There is a big variation in the shares of government expenditure and revenue as a percentage of GDP across OECD countries. Looking at revenues in 2014, seven countries reported revenues as a percentage of GDP of less than 35.0%: the lowest were reported for Mexico (24.5%) and the United States (33.1%). On the other hand, six countries reported revenues as a percentage of GDP greater than 50.0%: the highest were recorded for Denmark (58.4%), Finland (54.9%), and Norway (54.7%).

180

Sources • OECD (2015), National Accounts of OECD countries, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2015), OECD Economic Surveys, OECD Publishing.

Methodological publications • OECD (2008), OECD Glossary of Statistical Terms, OECD Publishing.

Online databases • OECD National Accounts Statistics. • OECD Economic Outlook: Statistics and Projections.

Websites • Financial statistics, www.oecd.org/std/fin-stats. • Sources & Methods of the OECD Economic Outlook, www.oecd.org/eco/sources-and-methods. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • GOVERNMENT DEFICITS AND DEBT GOVERNMENT EXPENDITURES, REVENUES AND DEFICITS

General government revenues and expenditures As a percentage of GDP Net lending

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Revenues

2000

2005

2010

2014 or latest available year

-1.1 -2.0 -0.1 2.9 .. -3.5 1.9 -0.1 6.9 -1.3 0.9 .. -3.0 1.2 4.9 -3.4 -1.3 -7.5 4.4 5.7 .. 1.9 1.7 15.1 -3.0 -3.2 -12.0 -3.6 -1.0 3.2 -0.4 .. 1.2 0.8 .. .. .. -7.0 .. .. .. ..

1.6 -2.5 -2.6 1.7 .. -3.1 5.0 1.1 2.6 -3.2 -3.4 .. -7.8 4.5 1.3 -4.2 -4.2 -4.8 1.6 0.2 1.6 -0.3 4.6 14.8 -4.0 -6.2 -2.9 -1.3 1.2 1.8 -1.2 .. -3.5 -4.1 .. .. .. -0.2 .. .. 6.0 ..

-4.6 -4.4 -4.0 -4.9 0.0 -4.4 -2.7 0.2 -2.6 -6.8 -4.2 -11.2 -4.5 -9.8 -32.3 -4.1 -4.2 -8.3 1.0 -0.5 -0.6 -5.0 -6.7 11.0 -7.5 -11.2 -7.5 -5.6 -9.4 0.0 0.3 -2.9 -9.7 -12.0 .. .. -2.8 1.5 .. .. -1.2 -3.1

-2.6 -2.7 -3.1 -1.6 -0.4 -1.9 1.5 0.7 -3.3 -3.9 0.3 -3.6 -2.5 -0.1 -3.9 -3.5 -3.0 -8.5 1.2 1.4 0.1 -2.4 -0.4 9.1 -3.3 -7.2 -2.8 -5.0 -5.9 -1.7 -0.2 -0.8 -5.7 -4.9 .. .. -2.2 1.2 .. .. 0.3 -4.1

2000

2005

35.1 48.3 49.0 43.4 .. 36.9 54.6 36.3 54.9 49.8 45.6 .. 44.2 42.6 35.8 44.7 44.2 31.3 29.1 42.0 .. 43.6 39.3 57.1 39.0 39.4 40.0 42.5 38.1 56.8 33.7 .. 39.0 34.5 .. .. .. .. .. .. .. ..

36.3 48.5 48.9 40.1 .. 38.7 56.2 35.1 51.9 49.7 42.8 .. 41.7 45.9 34.7 41.8 43.0 31.6 31.0 42.7 21.1 42.1 42.1 56.9 40.5 40.5 36.7 43.6 39.5 54.5 32.8 .. 39.2 32.3 .. .. .. .. .. .. 40.2 ..

Expenditures 2010

2014 or latest available year

2000

2005

2010

2014 or latest available year

32.2 48.3 49.3 38.3 .. 38.6 54.3 40.7 52.1 49.6 43.0 41.3 45.0 39.6 33.3 37.6 45.6 32.4 32.0 43.3 23.0 43.2 40.7 56.0 38.1 40.6 34.5 43.6 36.2 51.1 33.3 37.3 39.1 30.9 .. .. .. .. .. .. 38.5 ..

34.0 50.0 52.0 37.7 .. 40.6 58.4 38.7 54.9 53.6 44.6 46.4 47.4 45.6 34.4 37.7 48.2 33.9 33.2 43.8 24.5 43.9 39.7 54.7 38.8 44.5 38.9 44.8 38.6 50.1 33.5 36.6 38.2 33.1 .. .. .. .. .. .. 40.2 ..

.. 50.3 48.6 .. .. 40.4 52.7 36.4 48.0 51.1 44.6 .. 47.2 .. 30.9 48.2 45.5 .. 24.7 36.9 .. 41.8 .. .. .. 42.6 51.8 46.1 39.1 53.6 .. .. 37.8 33.7 .. .. .. .. .. .. .. ..

.. 51.0 50.8 .. .. 41.8 51.2 33.9 49.3 52.9 46.0 .. 49.6 .. 33.3 45.9 47.1 36.4 29.5 43.0 .. 42.3 .. 42.1 .. 46.7 39.4 44.9 38.3 52.7 34.0 .. 42.7 36.4 .. .. .. .. .. .. 34.2 ..

.. 52.7 52.4 .. .. 43.0 57.1 40.4 54.8 56.4 47.1 .. 49.6 .. 65.6 41.6 49.9 40.6 31.0 44.2 .. 48.2 .. 45.0 .. 51.8 41.9 49.2 45.6 52.0 32.9 40.2 48.7 42.6 .. .. .. .. .. .. 39.3 ..

.. 50.9 54.8 .. .. 42.1 56.9 38.3 57.6 57.0 44.1 .. 49.4 44.1 39.5 41.2 50.9 42.4 31.8 43.1 .. 46.2 .. 44.0 .. 50.4 40.9 60.1 45.1 53.4 33.5 37.4 45.0 39.0 .. .. .. .. .. .. 38.7 ..

1 2 http://dx.doi.org/10.1787/888933336228

General government net lending As a percentage of GDP 3-year average at end of period (2012-14 or latest available period)

3-year average at beginning of period (2000-02 or 1st available period)

15

10

5

0

-5

-10

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181

GOVERNMENT • GOVERNMENT DEFICITS AND DEBT

GOVERNMENT DEBT The accumulation of government debt is a key determinant of the sustainability of government finance. Apart from net acquisitions of financial assets, changes in government debt over time reflect the accumulation of government deficits/surpluses. The government debt-to-GDP ratio, calculated as the amount of total gross government debt of a country as a percentage of its Gross Domestic Product (GDP), is one of the indicators of the health of an economy.

Definition Generally, debt is defined as all liabilities that require payment or payments of interest or principal by the debtor to the creditor at a date or dates in the future. Consequently, all debt instruments are liabilities, but some liabilities such as equity and investment fund shares and financial derivatives are not debt. Debt is thus obtained as the sum of the following liability categories: monetary gold and Special Drawing Rights (SDRs), currency and deposits; debt securities; loans; insurance, pension, and standardised guarantees; and other accounts payable. Importantly, debt securities are valued at market prices.

Comparability The comparability of data on general government debt can be affected by the delineation of the government sector. The degree of consolidation within the government sector may also have an impact on the international comparability

of data. Consolidated data are provided by all OECD countries, except: Chile, Japan, and Mexico. The status and treatment of government liabilities in respect of their employee pension plans in the national accounts is diverse, making international comparability of government debt difficult. In particular, the 2008 SNA recognises the importance of the liabilities of employers' pension schemes, regardless of whether they are funded or unfunded. However, for pensions provided by government to their employees, countries have some flexibility in the recording of the unfunded liabilities. A few OECD countries, such as Australia, Canada, Iceland, Sweden and the United States, record unfunded liabilities of government employee pension plans in general government debt data. To enhance the comparability across OECD countries, an adjusted debt-to-GDP ratio is calculated for all countries by excluding from the gross debt these unfunded pension liabilities. For the aforementioned five countries, a debt-to GDP ratio including unfunded pension liabilities, measures the impact of this recording on the ratio. For Australia, the difference between the two ratios accounts for 22.5% of GDP in 2014. All countries compile data according to the 2008 SNA “System of National Accounts, 2008” with the exception of Chile, Japan, and Turkey, where data are compiled according to the 1993 SNA.

Overview In 2014, 19 OECD countries recorded adjusted debt-toGDP ratios above 60% compared with 12 countries in 2007. In 2014, countries that recorded the highest debtto-GDP ratios were Greece (180%), Italy (156%), and Portugal (150%). Japan recorded the highest debt ratio at 239% in 2013, the latest year available. In 2014, the lowest debt-to-GDP ratios were found in Estonia (14%) and Chile (23%). Ireland recorded the highest increase in its debt-to-GDP ratio between 2007 and 2014 (98 percentage points), reaching a level of 125% in 2014. Other countries with a considerable increase of more than 50 percentage points in the period 2007-14 were Spain (76 percentage points), Portugal (72 percentage points) and Slovenia (68 percentag e points). By contrast, Norway’s government debt, as a percentage of GDP, declined by 23 percentage points between 2007 and 2014. The rapid rise in debt-to-GDP ratios from 2007 reflects reduced tax revenues, increases in government budget deficits and the cost of government interventions to support the financial system.

Sources • OECD (2015), “Financial Balance Sheets”, OECD National Accounts Statistics (Database).

Further information Analytical publications • Bloch, D. and F. Fall (2015), “Government Debt Indicators: Understanding the Data”, OECD Economics Department Working Papers, No. 1228, OECD Publishing. • OECD (2015), OECD Economic Outlook, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2014), National Accounts of OECD Countries, Financial Balance Sheets, OECD Publishing.

Methodological publications • OECD, et al. (2009), System of National Accounts, United Nations, New York.

Websites • Financial statistics, www.oecd.org/std/fin-stats.

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GOVERNMENT • GOVERNMENT DEFICITS AND DEBT GOVERNMENT DEBT

Adjusted general government debt (excluding unfunded pension liabilities) As a percentage of GDP Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

23.9 73.4 118.0 84.8 .. 30.1 58.1 7.6 48.2 74.6 61.3 111.0 60.0 .. 34.1 94.9 116.9 161.8 .. 12.3 .. 56.9 .. 38.7 .. 66.8 49.4 34.0 59.3 57.7 58.9 .. 46.0 55.2 .. .. .. .. .. .. .. ..

20.9 72.0 114.4 80.3 .. 32.6 56.1 8.4 49.2 78.5 64.8 105.7 60.7 39.9 32.9 100.2 114.2 172.3 .. 13.2 42.5 58.0 .. 48.0 54.8 70.6 47.5 33.5 54.4 56.6 57.4 .. 45.6 58.2 .. .. .. .. .. .. .. ..

21.4 71.3 110.1 76.5 .. 32.2 52.4 8.6 49.4 80.0 67.7 107.2 64.1 34.8 31.5 98.0 114.6 178.8 .. 14.1 38.0 58.0 .. 49.9 53.7 76.7 45.1 34.3 52.5 56.0 58.1 .. 48.9 65.1 .. .. .. .. .. .. .. ..

21.0 75.8 107.6 75.8 17.4 31.9 45.1 8.2 46.5 81.7 70.3 111.3 67.1 26.5 31.4 95.7 117.4 180.2 .. 12.4 35.5 57.1 .. 46.9 54.4 80.0 38.1 33.4 50.0 56.9 56.1 .. 50.8 64.3 .. .. .. .. .. .. .. ..

19.7 72.4 99.7 74.9 14.1 31.6 40.5 8.0 43.1 76.9 68.4 115.8 70.7 32.1 27.6 85.4 115.0 180.0 .. 11.9 34.9 51.0 .. 57.8 54.5 79.4 36.0 33.3 45.7 51.0 50.1 .. 50.0 63.0 .. .. .. .. .. .. .. ..

19.5 68.7 93.5 70.4 12.2 30.3 34.6 7.2 39.1 75.6 64.3 113.1 71.5 30.2 27.4 81.3 110.6 180.0 .. 11.6 37.9 48.2 .. 55.6 50.9 78.1 34.5 29.1 41.7 45.4 49.9 .. 51.0 63.1 .. .. .. .. .. .. .. ..

20.7 74.0 100.8 74.7 12.4 34.2 42.0 8.4 38.3 81.5 68.1 117.4 75.0 70.9 47.5 81.0 112.9 184.2 .. 19.2 41.9 61.0 .. 54.2 53.9 82.8 33.5 28.3 47.1 44.0 46.1 .. 61.7 71.7 .. .. .. .. .. .. .. ..

25.4 86.3 109.2 87.4 13.4 41.0 49.5 12.6 49.2 93.2 75.6 134.7 84.1 85.6 67.8 84.0 125.9 207.3 .. 18.9 44.3 63.7 .. 48.1 57.1 96.1 42.0 42.5 61.7 47.2 44.9 54.3 75.5 84.8 .. .. .. .. .. .. .. ..

28.5 90.3 107.4 89.5 15.6 45.8 53.8 11.9 55.1 96.8 84.1 128.4 86.0 90.9 84.6 80.3 124.8 210.6 .. 26.2 40.8 67.6 .. 48.4 60.7 104.1 46.9 46.8 66.5 44.8 43.5 52.5 88.0 93.4 .. .. .. .. .. .. .. ..

33.1 91.3 109.8 93.1 18.3 48.1 60.6 9.4 57.5 100.7 83.5 110.7 95.0 97.5 109.2 78.6 117.8 226.5 .. 27.0 46.4 71.6 .. 33.8 61.1 107.8 49.4 50.4 77.5 45.1 43.3 47.8 101.5 97.6 .. .. .. .. .. .. .. ..

36.6 97.5 119.9 95.9 18.8 57.8 61.5 | 12.9 63.4 110.4 86.4 167.0 97.9 95.5 129.7 79.0 136.0 234.8 .. 30.6 49.6 77.4 .. 34.5 60.7 136.9 57.7 60.6 92.0 45.3 44.5 46.4 106.6 101.0 .. .. .. .. .. .. .. ..

37.0 93.6 117.7 92.3 19.4 57.9 58.0 13.4 64.4 110.1 81.6 181.7 95.9 87.8 133.0 77.0 143.2 239.3 .. 30.0 48.7 76.4 .. 34.8 62.6 140.7 60.7 79.5 103.8 47.3 .. 39.7 102.6 103.2 .. .. .. .. .. .. .. ..

40.7 102.2 129.3 | 94.6 23.1 57.0 60.6 13.6 71.0 119.2 82.2 179.8 99.3 .. 125.4 .. 156.2 .. .. 33.7 .. 81.0 .. 32.4 65.9 149.9 60.1 97.3 117.7 53.8 .. .. 113.6 103.4 .. .. .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336216

General government debt-to-GDP (including unfunded pension liabilities) As a percentage of GDP Australia Canada Iceland Sweden United States

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

40.7 101.3 .. 64.2 70.5

38.3 96.3 66.1 63.0 71.4

37.5 91.7 59.6 62.5 79.2

36.7 90.5 49.7 63.6 78.5

36.3 89.1 54.9 57.6 76.2

34.1 84.3 49.8 51.9 76.5

35.1 88.5 95.7 50.7 92.3

43.3 102.1 109.4 54.5 105.7

46.9 103.8 114.6 51.9 116.0

50.8 106.8 122.1 52.8 121.6

62.8 109.4 120.2 53.4 124.7

58.5 105.7 112.2 55.9 123.8

63.2 107.6 .. 62.5 123.2

1 2 http://dx.doi.org/10.1787/888933336815

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183

GOVERNMENT • GENERAL GOVERNMENT

EXPENDITURES ACROSS LEVELS OF GOVERNMENT General government

The responsibility for the provision of public goods and services and redistribution of income is divided between different levels of government. In some countries, local and regional governments play a larger role in delivering services, such as providing public housing or running schools. Data on the distribution of government spending by both level and function can provide an indication of the extent to which key government activities are decentralised to sub-national governments.

Definition Data on government expenditures are derived from the OECD Annual National Accounts, which are based on the System of National Accounts (SNA), a set of internationally agreed concepts, definitions, classifications and rules for national accounting. The general government sector consists of central, state and local governments and the social security funds controlled by these units. Data on the distribution of general government expenditures across levels of government exclude transfers between levels of government and thus provide a rough proxy of the overall responsibility for providing goods and services borne by each level of government. For the central level of government, data on expenditures are shown here according to the Classification of the Functions of Government. Data on central government expenditures by function

include transfers between the different levels of government.

Comparability Data for Australia, Korea, Japan and Turkey on the distribution of general government expenditures across levels of government include transfers between levels of government. The state government category is only applicable to the nine OECD countries that are federal states: Australia, Austria, Belgium, Canada, Germany, Mexico, Spain (considered a quasi-federal country), Switzerland and the United States. Local government is included in state government for Australia and the United States. Social security funds are included in central government in Ireland, New Zealand, Norway, the United Kingdom and the United States. Australia does not operate government social insurance schemes. The OECD average does not include Chile and Turkey for general government expenditures across levels of government and does not include Canada, Chile, Mexico, New Zealand and Turkey for central government expenditures by function. Data for Australia refer to 2012 rather than 2013 for government expenditures across levels of government and data for Iceland refer to 2012 rather than 2013 for central government expenditures by function.

Overview Across the OECD, in 2013, 42.8% of general government expenditures were undertaken by central government. Sub-central governments (state and local) covered 37.8% and social security funds accounted for the remaining 19.4%. However, the level of fiscal decentralisation varies considerably across countries. In Ireland, for example, 90.4% of total expenditure is carried out by central government, representing an increase of 8.4 percentage points from 2007, by contrast, state and local governments in Belgium, Canada, Germany, Spain, Switzerland and Mexico (federal or quasi-federal states) account for a larger share of public expenditures than the central government. In general, central governments spend a relatively larger proportion of their budgets on social protection (e.g. pensions and unemployment benefits), general public services (e.g. executive and legislative organs, public debt transactions) and defence than state and local governments. In half of OECD countries, expenditures on social protection represent the largest share of central government budgets. In Belgium and Spain, central governments allocate over 60% of their budgets to general public services.

184

Sources • OECD (2015), Government at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2013), Value for Money in Government, OECD Publishing.

Statistical publications • OECD (2015), National Accounts of OECD Countries, OECD Publishing. • OECD (2014), National Accounts at a Glance, OECD Publishing. • OECD (2014), Quarterly National Accounts, OECD Publishing.

Online databases • “General Government Accounts: Government expenditure by function”, OECD National Accounts Statistics. • “National Accounts at a Glance”, OECD National Accounts Statistics. • Government at a Glance.

Websites • Government at a Glance (supplementary material), www.oecd.org/gov/govataglance.htm. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • GENERAL GOVERNMENT EXPENDITURES ACROSS LEVELS OF GOVERNMENT

Structure of central government expenditures by function Percentage, 2013 or latest available year General public services Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

.. 35.7 67.2 .. .. 12.4 29.4 17.4 22.7 31.2 30.1 40.4 31.6 24.1 18.0 17.6 30.5 35.1 25.5 19.5 .. 28.4 .. 22.9 22.1 38.9 21.7 14.1 72.7 32.1 25.7 .. 14.2 13.5 .. 23.9 .. .. .. .. .. ..

Defence .. 1.8 3.0 .. .. 2.5 3.1 6.4 5.2 7.6 8.3 4.3 1.3 0.1 1.0 16.7 4.0 4.8 12.5 1.2 .. 4.5 .. 3.8 7.0 2.9 4.9 2.3 4.3 4.8 7.4 .. 5.5 16.3 .. 9.8 .. .. .. .. .. ..

Public order and safety .. 3.4 3.7 .. .. 5.4 2.2 6.5 3.9 5.6 1.2 3.7 5.4 4.0 3.7 4.3 5.8 1.5 4.8 3.1 .. 6.8 .. 2.4 8.9 5.1 12.4 4.9 4.9 3.8 1.6 .. 4.1 1.5 .. 3.1 .. .. .. .. .. ..

Economic affairs .. 10.8 7.4 .. .. 14.1 6.0 12.1 11.6 12.8 9.4 29.4 16.2 11.2 6.5 7.1 12.0 12.7 19.2 11.1 .. 9.4 .. 9.4 9.0 6.1 11.7 32.0 8.3 9.8 20.7 .. 6.3 5.6 .. 8.9 .. .. .. .. .. ..

Environmental protection

Housing and community amenities

.. 0.8 1.2 .. .. 0.8 0.4 1.5 0.7 0.5 1.1 0.5 0.9 1.0 0.6 0.3 0.6 1.2 1.1 1.6 .. 0.7 .. 0.8 0.8 0.1 1.7 0.7 0.2 0.5 1.7 .. 0.9 0.0 .. 0.5 .. .. .. .. .. ..

Health

.. 0.1 0.0 .. .. 0.9 0.4 0.0 0.7 1.7 0.5 0.1 0.6 2.2 0.4 0.5 1.0 3.3 1.3 1.9 .. 0.3 .. 0.1 0.9 0.3 0.9 0.6 0.0 0.3 0.0 .. 4.0 1.8 .. 1.7 .. .. .. .. .. ..

.. 4.0 2.8 .. .. 5.0 11.3 7.4 11.4 1.1 1.6 5.0 16.3 22.1 18.3 13.4 11.4 9.3 3.6 2.0 .. 6.0 .. 15.5 5.1 16.5 8.6 9.2 1.2 4.1 0.5 .. 18.1 25.8 .. 15.3 .. .. .. .. .. ..

Recreation, culture and religion .. 1.0 0.2 .. .. 1.2 2.4 4.0 2.5 1.4 0.5 0.7 3.7 3.3 1.3 2.6 1.4 0.1 1.4 2.0 .. 1.3 .. 1.7 1.0 1.0 3.1 2.7 1.0 1.1 0.8 .. 1.2 0.1 .. 0.7 .. .. .. .. .. ..

Education

Social protection

.. 9.9 4.8 .. .. 14.0 9.7 9.0 12.6 16.8 1.4 8.4 11.2 9.3 11.3 16.6 11.2 5.5 19.5 15.8 .. 18.4 .. 3.9 16.7 15.0 15.6 12.5 0.7 5.8 9.9 .. 10.6 2.7 .. 7.2 .. .. .. .. .. ..

.. 32.5 9.7 .. .. 43.7 35.0 35.8 28.7 21.3 45.9 7.4 12.9 22.7 38.8 20.8 22.2 26.4 11.2 42.0 .. 24.4 .. 39.4 28.5 14.1 19.4 21.1 6.7 37.8 31.9 .. 35.2 32.8 .. 28.9 .. .. .. .. .. ..

1 2 http://dx.doi.org/10.1787/888933336171

Distribution of general government expenditures across levels of government Percentage, 2007-13 Central, 2007 Central, 2013

State, 2007 State, 2013

Local, 2007 Local, 2013

Social security, 2007 Social security, 2013

100 90 80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933334999

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GOVERNMENT • GENERAL GOVERNMENT

GENERAL GOVERNMENT EXPENDITURES AND REVENUES PER CAPITA Governments spend money to provide goods and services and redistribute income. To finance these activities governments raise money in the form of revenues (e.g. taxation) and/or borrowing. The amount of revenues and expenditures per capita provide an indication of the importance of the public sector in the economy across countries. Variations across countries however can also reflect different approaches to the delivery of public services (e.g. such as the use of tax breaks rather than direct expenditures).

Definition

example, vacationers) who are in the country for less than one year are excluded.

Comparability Differences in the amounts of government revenues and expenditures per capita in some countries can be related to the fact that individuals may feature as employees of one country (contributing to the GDP of that country via production), but residents of another (with their wages and salaries reflected in the Gross National Income of their resident country). The OECD average does not include Chile and Turkey.

Data are derived from the OECD Annual National Accounts, which are based on the System of National Accounts (SNA), a set of internationally agreed concepts, definitions, classifications and rules for national accounting. The general government sector consists of central, state and local governments and the social security funds controlled by these units. The underlying population estimates are based on the SNA notion of residency. They include persons who are resident in a country for one year or more, regardless of their citizenship, and also include foreign diplomatic personnel, and defence personnel; together with their families and students studying and patients seeking treatment abroad, even if they stay abroad for more than one year. The “one year” rule means that usual residents who live abroad for less than one year are included in the population, while foreign visitors (for

Overview On average in the OECD area, governments collected on average USD 14 852 PPP per capita in revenues in 2013, while spending represented USD 16 491 PPP per capita in the same year. Luxembourg and Norway collected the largest government revenues per capita in the OECD, above USD 30 000 PPP per capita reflecting the large number of cross-border workers and high corporate taxes in Luxembourg and oil revenues in Norway. These two countries also spent the most per citizen (above USD 26 000 PPP). The governments of Mexico and Turkey collected the smallest revenues per capita; below USD 7 000 PPP. Likewise, government expenditures in these countries we r e a l s o m u ch l owe r t h a n av e ra g e ( b e l ow USD 7 000 PPP per capita). In general, central European countries also collect comparatively less revenues per capita, and also spend less than most OECD countries. On average across OECD countries revenues per capita increased, in real terms, at an annual rate of 2.4% between 2009 and 2013 whereas a slight decrease was recorded for expenditures per capita (0.2%) over the same period.

186

Sources • OECD (2015), Government at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2015), OECD Economic Outlook, OECD Publishing. • OECD (2015), Value for Money in Government, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Online databases • “General Government Accounts, SNA 2008 (or SNA 1993): Main aggregates”, OECD National Accounts Statistics. • Government at a Glance.

Websites • Government at a Glance (supplementary material), www.oecd.org/gov/govataglance.htm. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • GENERAL GOVERNMENT GENERAL GOVERNMENT EXPENDITURES AND REVENUES PER CAPITA

General government revenues and expenditures per capita US dollars, current prices and PPPs General government revenues per capita

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

General government expenditures per capita

2009

2011

2013

2014

2009

2011

2013

2014

13 402 19 824 18 028 15 153 .. 10 248 21 392 8 850 19 610 17 279 16 465 11 791 9 610 15 394 13 957 9 986 15 546 10 531 9 531 35 569 3 294 18 973 11 971 31 715 7 254 10 597 8 274 11 636 11 420 20 779 16 785 5 306 14 116 14 188 .. 12 729 4 521 .. 756 1 222 7 282 ..

14 279 21 247 20 323 15 785 .. 11 364 23 727 9 221 21 470 18 982 18 393 11 683 10 010 15 845 15 050 11 381 16 195 11 341 10 439 38 995 3 867 19 801 12 861 35 925 8 614 11 478 9 136 12 415 11 773 22 449 18 360 6 470 14 330 15 354 .. 13 747 5 291 .. 921 1 537 9 192 ..

15 216 22 352 21 578 16 338 .. 11 832 24 534 9 938 22 022 19 913 19 171 12 257 11 044 17 636 15 913 12 094 16 720 12 273 10 951 40 295 4 144 20 554 13 892 36 341 9 052 12 446 10 186 13 033 12 418 23 182 19 132 .. 15 214 17 564 .. 14 852 5 685 .. 1 079 1 736 .. ..

.. 22 733 21 894 16 715 .. .. 26 108 10 589 22 308 20 340 19 695 12 011 11 822 .. 17 066 .. 16 965 .. .. .. .. 20 894 .. 36 740 9 585 12 665 10 732 13 539 12 834 23 406 .. .. 15 345 .. .. .. 5 471 .. 1 134 1 768 .. ..

15 730 21 985 20 092 16 904 .. 11 731 22 506 9 288 20 561 19 774 17 590 16 443 10 568 19 129 19 746 11 525 17 331 13 349 9 905 36 000 3 380 21 398 12 835 25 904 8 655 13 167 10 100 13 322 15 014 21 064 16 409 6 249 18 044 20 135 .. 15 683 4 946 .. 1 155 1 352 8 058 ..

16 197 22 375 22 010 17 343 .. 12 138 24 624 8 941 21 879 20 886 18 756 14 408 11 245 17 954 20 775 12 377 17 433 14 364 10 133 38 639 3 880 21 809 13 982 27 488 9 695 13 461 10 167 14 193 14 851 22 484 17 948 6 612 17 120 20 632 .. 16 214 5 663 .. 1 313 1 591 8 339 ..

16 379 22 931 22 800 17 503 .. 12 168 24 998 9 993 23 033 21 448 19 107 15 422 11 618 18 466 18 563 13 424 17 747 15 338 10 509 39 518 4 128 21 605 14 036 28 905 10 004 13 774 10 871 17 232 14 668 23 795 19 086 .. 17 410 20 513 .. 16 491 6 173 .. 1 473 1 938 .. ..

.. 23 830 23 285 17 441 .. .. 25 551 10 422 23 576 21 851 19 400 12 942 12 459 .. 19 079 .. 18 036 .. .. .. .. 21 975 .. 30 660 10 378 13 935 11 524 15 010 14 805 24 270 .. .. 17 598 .. .. .. 6 474 .. 1 553 1 997 .. ..

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General government revenues and expenditures per capita US dollars, current prices and PPPs, 2013 and 2014 Revenues 2013

Expenditures 2013

Revenues 2014

Expenditures 2014

45 000 40 000 35 000 30 000 25 000 20 000 15 000 10 000 5 000 0

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GOVERNMENT • GENERAL GOVERNMENT

GENERAL GOVERNMENT PRODUCTION COSTS

Governments use a mix of their own employees, capital and outside contractors (non-profit institutions or private sector entities) to produce goods and services. The latter is often referred to as “outsourcing”.

System of National Accounts (SNA), a set of internationally agreed concepts, definitions, classifications and rules for national accounting. Specifically, government production costs include: compensation costs of general government employees; goods and services used and financed by general government (including, in SNA terms, intermediate consumption and social transfer in kind via market producers paid for by government); and, other production costs (which include SNA terms, consumption of fixed capital, i.e. depreciation of capital, and other taxes on production less other subsidies on production). The data include government employment and expenditures for output produced by the government for its own use.

This concept and methodology of production costs builds on the existing classification of public expenditures in the

Comparability

Decisions on the amount and type of goods and services governments produce, as well as on how to produce them, vary across countries. While some governments choose to outsource a large portion of their production of goods and services to non-governmental or private entities, others decide to produce the goods and services themselves.

Definition

Overview In 2013, the production costs of government services and goods represented on average 21.3% of GDP in the OECD, ranging from 32.3% in Finland to 12.3% in Mexico. Between 2007 and 2013, the share of government production costs in GDP increased on average by 1.1 percentage points across OECD countries. This increase was primarily driven by increases in the cost of goods and services produced by private and nonprofit agencies (0.7 percentage points). Few countries experienced a reduction in production costs over the same period. In Israel and Greece the decline took place mainly through a lower share of costs of goods and services used and financed by government, whereas in Hungary, Poland and Portugal it took place through a l owe r s h a re o f c o m p e n s a t i o n o f g ove r n m e n t employees. In terms of the structure of production costs, on average, production by governments’ own employees is still somewhat higher than outsourcing: compensation of employees accounts for 45.2% of the cost of producing government goods and services, compared to 41.9% paid to non-governmental actors for intermediate goods and services or to deliver services directly to households. Other production costs represent the remaining 12.9% of total government production costs. In 2013 government outsourcing represented, on average, 8.9% of GDP in the OECD. However, its importance varies greatly ranging from 3.0% of GDP in Mexico to 17.1% of GDP in the Netherlands. Among OECD countries, Belgium, Japan, Germany and the Netherlands dedicated the largest shares (over 60%) for their resources to outsourcing goods and services through direct third party provision. In contrast, Denmark, Israel and Switzerland spent the majority of outsourcing in intermediate consumption.

188

Data include some cross-country differences, for example, some countries do not record separately for social transfers in kind via market producers in their national accounts. Thus, the costs produced by non-government entities paid for by government may be understated in those countries. The OECD average for production costs does not include Chile and Turkey.

Sources • OECD (2015), Government at a Glance, OECD Publishing.

Further information Analytical publications • OECD (2015), Value for Money in Government, OECD Publishing. • OECD (2008), The State of the Public Service, OECD Publishing.

Statistical publications • OECD (2015), National Accounts at a Glance, OECD Publishing. • OECD (2015), National Accounts of OECD Countries, OECD Publishing.

Online databases • “General Government Accounts, SNA 2008 (or SNA 1993): Main aggregates”, OECD National Accounts Statistics. • Government at a Glance.

Websites • Government at a Glance (supplementary material), www.oecd.org/gov/govataglance.htm. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • GENERAL GOVERNMENT GENERAL GOVERNMENT PRODUCTION COSTS

Production costs for general government As a percentage of GDP Costs of goods and services used and financed by general government

Compensation of employees

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Other production costs

Total

2007

2013

2014

2007

2013

2014

2007

2013

2014

2007

2013

2014

9.2 10.4 11.4 11.4 .. 7.0 15.3 9.4 12.6 12.4 7.3 10.9 11.5 14.1 10.1 10.5 10.2 6.2 6.9 7.4 8.0 8.6 9.2 12.1 10.4 13.1 7.2 10.4 9.9 12.3 6.9 7.0 10.6 10.1 .. 9.5 .. 7.8 .. .. 8.7 11.7

9.6 10.6 12.5 12.1 8.4 7.3 16.8 10.7 14.4 12.9 7.7 12.0 10.2 14.2 10.7 10.5 10.3 6.0 6.8 8.3 9.2 9.3 9.4 13.6 10.3 12.4 8.5 12.5 10.9 12.6 7.5 .. 9.7 10.0 .. 9.6 .. .. .. .. .. 14.3

.. 10.6 12.5 11.8 .. 7.1 16.9 11.1 14.3 13.0 7.7 12.0 10.6 .. 10.0 .. 10.1 .. 6.8 8.4 .. 9.2 .. 13.9 10.2 11.8 8.7 11.6 10.8 12.7 .. .. 9.5 .. .. .. .. .. .. .. .. ..

8.9 9.3 10.3 8.5 .. 10.4 9.6 7.1 10.9 10.0 11.0 9.2 9.2 10.3 6.8 12.4 7.5 10.2 7.3 7.6 2.5 15.2 10.5 7.4 7.8 7.5 9.2 7.4 7.4 10.4 5.0 8.7 10.8 6.8 .. 8.3 .. .. .. .. 8.8 10.0

9.1 10.3 11.9 9.5 .. 10.9 11.0 8.4 14.3 11.1 12.8 7.1 9.7 11.2 7.3 11.9 8.3 12.8 8.1 8.8 3.0 17.1 11.0 8.0 7.8 7.7 10.2 8.9 8.0 12.0 5.4 .. 11.5 6.8 .. 8.9 .. .. .. .. .. 13.5

.. 10.3 12.0 9.3 .. 10.8 11.0 8.5 14.6 11.1 12.9 6.7 9.9 .. 7.4 .. 8.3 .. 8.1 8.9 .. 16.8 .. 8.3 8.1 7.8 10.6 8.7 7.8 12.0 .. .. 11.3 .. .. .. .. .. .. .. .. ..

2.0 2.8 2.1 2.8 .. 4.4 2.9 1.9 3.0 3.4 2.1 2.5 3.4 1.7 1.8 2.2 3.0 2.8 2.4 1.8 0.1 3.1 2.3 2.5 2.4 2.3 3.3 2.4 2.1 5.7 2.6 .. 1.3 2.6 .. 2.5 .. .. .. .. 0.3 2.0

2.1 3.1 2.3 3.4 .. 4.6 2.9 3.0 3.5 3.8 2.3 3.5 3.6 2.0 1.8 2.0 3.3 3.0 2.9 2.2 0.1 3.5 2.2 3.0 2.3 2.7 3.6 3.0 2.7 6.0 2.9 .. 1.5 2.9 .. 2.8 .. .. .. .. .. 2.0

.. 3.1 2.4 3.3 .. 4.4 2.8 3.1 3.5 3.8 2.2 3.5 3.5 .. 1.6 .. 3.3 .. 3.0 2.2 .. 3.4 .. 3.1 2.4 2.6 3.6 2.9 2.7 6.0 .. .. 1.5 .. .. .. .. .. .. .. .. ..

20.2 22.5 23.7 22.7 .. 21.9 27.8 18.4 26.5 25.7 20.4 22.6 24.1 26.1 18.7 25.0 20.7 19.2 16.6 16.8 10.6 26.9 21.9 22.0 20.7 22.9 19.8 20.2 19.5 28.4 14.5 .. 22.8 19.4 .. 20.2 .. .. .. .. 17.8 23.7

20.8 24.0 26.7 24.9 .. 22.8 30.6 22.0 32.3 27.9 22.8 22.6 23.5 27.4 19.8 24.4 21.9 21.7 17.8 19.3 12.3 29.9 22.6 24.7 20.4 22.8 22.2 24.4 21.6 30.6 15.8 .. 22.8 19.6 .. 21.3 .. .. .. .. .. 29.8

.. 24.0 26.9 24.5 .. 22.3 30.7 22.6 32.4 27.9 22.8 22.2 24.0 .. 19.0 .. 21.7 .. 17.9 19.5 .. 29.4 .. 25.3 20.6 22.3 22.9 23.2 21.3 30.6 .. .. 22.4 .. .. .. .. .. .. .. .. ..

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Structure of general government production costs Percentage, 2013 Compensation of government employees

Costs of goods and services used and financed by government

Other production costs

100 90 80 70 60 50 40 30 20 10 0

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189

GOVERNMENT • PUBLIC EXPENDITURE

SOCIAL EXPENDITURE Public expenditure

Social expenditures are a measure of the extent to which countries assume responsibility for supporting the standard of living of disadvantaged or vulnerable groups.

Definition Social expenditure comprises cash benefits, direct in-kind provision of goods and services, and tax breaks with social purposes. Benefits may be targeted at low-income households, the elderly, disabled, sick, unemployed, or young persons. To be considered “social”, programmes have to involve either redistribution of resources across households or compulsory participation. Social benefits are classified as public when general government (that is central, state, and local governments, including social security funds) controls the relevant financial flows. All social benefits not provided by general government are considered private. Private transfers between households

Overview Gross public social expenditure increased from about 16% in 1980 to 18% in 1990 and to 22% of GDP in 2014 across OECD countries. Since 2009 and after the global financial crisis it has stayed around this level. Spending was highest, at over 30% of GDP, in France and Finland, and lowest, at 10% of GDP or below, in Chile, Korea and Mexico. Keeping measurement-related differences in mind, non-OECD countries have lower levels of social protection than OECD countries, particularly Indonesia and India. The three biggest categories of social transfers are pensions (on average 8% of GDP), health (6%) and income transfers to the working-age population (5%). Public spending on other social services exceeds 5% of GDP only in the Nordic countries, where the public role in providing services to the elderly, the disabled and families is the most extensive. In 2011, gross private social spending was highest (at just over 10% of GDP) in the United States and lowest (at less than 1% of GDP) in the Czech Republic, Estonia, Hungary, Mexico, New Zealand, Poland, Spain and Turkey. M ov i n g f ro m g ro s s p u bl i c t o n e t t o t a l s o c i a l expenditure not only leads to greater similarity in spending levels across countries it also changes the ranking among countries. Austria, Greece, Finland, Slovenia, Luxembourg, New Zealand and Poland drop 5 to 10 places in the rankings while Australia, Canada, Japan, the Netherlands and the United Kingdom move up the rankings by 5 to 10 places. As private social spending is so much larger in the United States compared with other countries its inclusion moves the United States from 23rd to 2nd place when comparing net total social spending across countries.

190

are not considered as “social” and not included. Net total social expenditure includes both public and private expenditure. It also accounts for the effect of the tax system by direct and indirect taxation and by tax breaks for social purposes.

Comparability For cross-country comparisons, the most commonly used indicator of social support is gross (before tax) public social expenditure relative to GDP. Measurement problems do exist, particularly with regard to spending by lower tiers of government, which may be underestimated in some countries. Public social spending totals reflect detailed social expenditure programme data till 2011-12, national aggregated for 2012-13 and estimates for 2014. Data on private social spending are often of lesser quality than for public spending. No data on net expenditure are currently available for Switzerland. Net data for New Zealand and Poland have been estimated on the basis of information available for 2009. For non-OECD countries, data are not strictly comparable with OECD countries.

Sources • OECD (2015), Social Expenditure Statistics (Database).

Further information Analytical publications • Adema, W., P. Fron and M. Ladaique (2011), “Is the European Welfare State Really More Expensive? Indicators on Social Spending, 1980-2012; and a Manual to the OECD Social Expenditure Database (SOCX)”, OECD Social, Employment and Migration Working Papers, No. 124. • OECD (2015), Integrating Social Services for Vulnerable Groups, OECD Publishing. • OECD (2011), Doing Better for Families, OECD Publishing.

Statistical publications • OECD (2014), Society at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Society at a Glance: OECD Social Indicators, OECD Publishing.

Websites • Mental health and work, www.oecd.org/employment/emp/ mental-health-and-work.htm. • OECD Family Database, www.oecd.org/social/family/ database.htm. • Social and welfare issues, www.oecd.org/social. • Social Benefit Recipients Database (SOCR) (supplementary material), www.oecd.org/social/soc/ recipients.htm. • Social Expenditure Database (SOCX) (supplementary material), www.oecd.org/social/expenditure.htm. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • PUBLIC EXPENDITURE SOCIAL EXPENDITURE

Public, private and total net social expenditure As a percentage of GDP Public expenditure

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Total net expenditure

Private expenditure

1990

2000

2009

2010

2011

2012

2013

2014

1990

2000

2010

2011

2011

13.1 23.4 24.9 17.6 9.8 14.6 25.0 .. 23.8 24.9 21.4 16.5 .. 13.5 17.2 .. 21.4 11.1 2.8 19.1 3.2 25.6 21.2 21.9 14.9 12.4 .. .. 19.7 28.5 12.8 5.5 16.3 13.1 .. 17.5 .. .. .. .. .. ..

17.2 26.1 24.5 15.8 12.7 18.8 26.0 13.8 23.3 28.4 26.2 19.2 20.5 15.0 13.1 16.8 23.3 16.3 4.8 19.6 5.0 19.8 18.9 20.8 20.3 18.6 17.8 22.8 20.0 28.2 17.2 .. 18.4 14.2 .. 18.6 .. .. .. .. .. ..

17.4 28.6 29.1 18.5 11.2 20.3 29.7 19.8 28.3 31.5 27.6 24.4 24.7 18.5 23.4 15.8 27.8 22.0 9.4 24.3 7.7 23.1 21.0 22.8 20.7 25.3 18.5 23.0 26.1 29.4 19.7 13.2 23.9 18.5 .. 21.9 .. 7.0 2.7 2.0 .. ..

17.2 28.6 28.8 17.9 10.5 19.9 29.9 18.8 28.7 31.7 26.8 24.2 23.5 17.9 23.3 15.7 27.8 22.1 9.0 23.0 7.8 23.7 21.0 22.4 20.7 25.2 18.4 23.9 26.7 27.9 19.5 12.6 22.8 19.3 .. 21.7 16.7 .. .. .. .. ..

17.8 27.7 29.4 17.4 10.1 20.1 30.1 16.8 28.3 31.4 25.5 25.7 22.6 18.1 22.3 15.6 27.5 23.1 9.0 22.5 7.7 23.5 20.7 21.8 20.1 24.8 18.1 24.0 26.8 27.2 19.3 12.2 22.7 19.0 .. 21.4 .. .. .. .. 12.8 ..

18.3 27.9 30.3 17.4 10.2 20.2 30.2 16.2 29.4 31.5 25.4 26.1 22.3 17.5 22.0 15.5 28.1 .. 9.6 23.4 7.9 24.1 21.0 21.7 20.1 24.8 18.3 24.0 27.1 27.7 19.7 12.3 23.0 18.7 .. 21.6 .. 9.0 .. .. .. 8.7

19.0 28.3 30.9 17.2 10.0 20.5 30.2 16.1 30.6 32.0 25.6 24.3 22.1 17.1 21.9 15.5 28.7 .. 10.2 23.4 .. 24.6 20.8 22.0 20.7 25.8 18.7 23.8 27.3 28.2 19.9 12.5 22.5 18.6 .. 21.7 .. .. .. .. .. ..

19.0 28.4 30.7 17.0 .. 20.6 30.1 16.3 31.0 31.9 25.8 24.0 22.1 16.5 21.0 .. 28.6 .. 10.4 23.5 .. 24.7 .. 22.0 20.6 25.2 18.4 23.7 26.8 28.1 19.4 .. 21.7 19.2 .. 21.6 .. .. .. .. .. ..

0.9 2.2 1.6 3.2 0.5 .. 2.1 .. 1.1 1.9 3.0 2.1 .. 3.0 1.4 .. 2.1 0.2 0.4 .. 0.1 6.1 0.2 1.9 .. 0.9 .. .. 0.2 1.2 4.4 .. 5.0 7.3 .. .. .. .. .. .. .. ..

4.4 1.9 1.7 4.9 1.2 0.3 2.4 .. 1.2 2.6 3.1 2.1 0.0 4.2 1.3 2.3 1.8 3.6 2.7 0.1 0.1 7.3 0.5 2.0 .. 1.5 0.8 0.0 0.3 2.6 6.6 .. 7.6 8.8 .. 2.9 .. .. .. .. .. ..

3.1 2.0 2.0 4.7 4.0 0.7 4.8 0.0 1.2 3.6 3.2 1.9 0.3 5.8 1.9 2.4 2.2 3.5 2.4 1.7 0.2 7.4 0.5 2.1 0.0 1.8 1.0 1.1 0.5 3.2 7.0 .. 6.2 10.8 .. 3.2 .. .. .. .. .. ..

3.3 2.0 2.1 4.6 4.1 0.8 5.1 0.0 1.2 3.6 3.2 1.9 0.2 5.9 1.9 2.4 2.2 3.7 2.7 1.7 0.2 7.4 0.5 2.2 0.0 1.9 0.9 1.2 0.5 3.2 7.0 .. 6.2 10.9 .. 3.2 .. .. .. .. .. ..

19.8 24.3 27.4 20.7 13.1 19.3 26.1 14.2 23.4 31.3 25.3 23.7 20.6 20.4 21.9 15.7 25.4 25.6 11.6 19.1 7.7 25.8 18.8 19.3 16.8 24.0 17.6 21.6 24.8 24.6 .. 11.1 26.1 28.8 .. 21.7 .. .. .. .. .. ..

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Public, private and total net social expenditure As a percentage of GDP, 2011 Public

Private

Net Total

40 35 30 25 20 15 10 5 0

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GOVERNMENT • PUBLIC EXPENDITURE

PENSION EXPENDITURE Pension systems vary across countries and no single model fits all. Generally, there is a mix of public and private provision. Public pensions are statutory, most often financed on a pay-as-you-go (PAYG) basis – where current contributions pay for current benefits – and managed by public institutions. Private pensions are in some cases mandatory but more usually voluntary, funded, employment-based (occupational) pension plans or individual retirement savings plans (personal pensions).

Definition Old-age pension benefits are treated as public when relevant financial flows are controlled by general government (i.e. central and local governments or social security funds). Pension benefits provided by governments to their own employees and paid directly out of the government’s current budget are also considered to be public. Public pensions are generally financed on a PAYG basis, but also include some funded arrangements. All pension benefits not provided by general government are within the private domain. Private expenditures on pensions include payments made to private pension plan members (or dependants) after retirement. All types of plans are included (occupational and personal, mandatory and voluntary, funded and book

reserved), covering persons working in both the public and private sectors.

Comparability Public pension expenditures come from the OECD Social Expenditure (SOCX) database while pension expenditures for private pension arrangements come from the OECD Global Pension Statistics (GPS) database. The GPS database provides information on funded pension arrangements, which includes both private and public pension plans that are funded. Although the GPS database covers all types of private pension arrangements for most countries, private pension expenditure data for Austria, Canada, Germany, Greece, Hungary, Luxembourg, the Netherlands, Switzerland, the United Kingdom and the United States only relate to autonomous pension funds. A break in series for Mexico reflects the inclusion of occupational pension plans registered by CONSAR since 2005. The large increase in private pension expenditures between 2008 and 2009 for Iceland reflects the increase in the number of people retiring due to the unemployment peak after the bank crisis and the passing of a special temporary Act allowing people to withdraw limited amounts of money from personal pension plans.

Overview Public spending on old-age benefits averaged 7.9% of GDP in 2011, compared with private pension benefits of an average of 1.6% of GDP in the same year (in the countries for which data are available that year). Public spending on old-age pensions is highest – greater than 10% of GDP – in Austria, Belgium, Finland, France, Germany, Greece, Italy, Japan, Poland, Portugal, Slovenia and Spain. By contrast, Australia, Chile, Iceland, Korea and Mexico spend 4% of GDP or less on public old-age pensions. Private expenditure on old-age benefits is the highest in Australia, Denmark, Iceland, the Netherlands, Switzerland and the United States, where it exceeds 4% of GDP in 2013. However, private benefit spending remains negligible in around a third of OECD countries. The share of private pensions in total expenditures on old-age benefits exceeds 50% only in Australia and Iceland in 2011. The average share of private pensions in the total in 2011 is 19%.

Sources • OECD (2015), OECD Pensions Statistics (Database). • OECD (2015), OECD Social Expenditure Statistics (Database).

Further information Analytical publications • OECD (2014), OECD Pensions Outlook, OECD Publishing. • OECD (2009), OECD Private Pensions Outlook 2008, OECD Publishing.

Statistical publications • OECD (2015), OECD Pensions at a Glance, OECD Publishing. • OECD (2013), Pensions at a Glance: Asia/Pacific, OECD Publishing.

Methodological publications

Over time, public pension expenditures have grown a little faster than national income: from an average of 6.8% of GDP in 2000 to 7.9% in 2011.

• OECD (2005), Private Pensions: OECD Classification and Glossary, OECD Publishing.

Expenditure on private pensions has also grown over the last years, from an average of 1.4% of GDP in 2008 to 1.6% in 2013.

• Pension Markets in Focus, www.oecd.org/pensions/privatepensions/pensionmarketsinfocus.htm. • Social Expenditure Database (SOCX) (supplementary material), www.oecd.org/social/expenditure.htm.

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Websites

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GOVERNMENT • PUBLIC EXPENDITURE PENSION EXPENDITURE

Public and private expenditure on pensions As a percentage of GDP Public expenditure

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

Private expenditure

2000

2005

2008

2009

2010

2011

2008

2009

2010

2011

2012

2013

3.8 12.2 8.9 4.2 7.3 7.2 5.3 6.0 7.6 11.8 11.2 10.8 7.6 2.2 3.1 4.7 13.7 7.3 1.4 7.5 0.8 5.0 4.9 4.8 10.5 7.9 6.3 10.5 8.6 7.2 6.5 4.9 5.3 5.6 .. 6.8 .. .. .. .. .. ..

3.3 12.4 9.0 4.0 3.7 7.0 5.4 5.3 8.4 12.4 11.5 11.8 8.5 2.0 3.4 4.9 14.0 8.5 1.5 7.2 1.2 5.0 4.2 4.8 11.4 10.3 6.2 9.9 8.1 7.6 6.6 5.9 5.5 5.7 .. 7.0 .. .. .. .. .. ..

3.6 12.4 9.4 4.1 3.3 7.4 5.2 6.2 8.4 12.6 10.6 12.4 9.7 1.8 4.1 4.6 14.6 9.2 2.0 7.0 1.4 4.8 4.4 4.6 10.9 11.3 5.7 9.5 8.6 7.4 6.1 6.7 5.6 5.9 .. 7.1 .. .. .. .. .. ..

3.5 13.4 10.0 4.4 3.6 8.3 5.8 7.9 10.0 13.5 11.3 13.1 10.8 1.7 5.0 4.8 15.6 10.1 2.1 8.0 1.7 5.3 4.6 5.2 11.4 12.3 7.0 10.8 9.5 8.2 6.6 7.8 5.9 6.5 .. 7.8 .. .. .. .. .. ..

3.4 13.5 10.0 4.3 3.4 8.5 5.9 7.8 10.3 13.6 11.0 13.6 9.8 1.7 5.2 4.7 15.8 10.0 2.2 7.6 1.8 5.4 4.7 5.3 11.3 12.5 7.0 11.2 10.1 7.7 6.5 7.7 5.6 6.6 .. 7.8 .. .. .. .. .. ..

3.5 13.2 10.2 4.3 3.2 8.9 6.2 6.9 10.3 13.8 10.6 14.5 10.0 2.1 5.3 4.8 15.8 10.2 2.2 7.7 1.8 5.5 4.9 5.4 10.8 13.0 7.0 11.4 10.5 7.4 6.6 7.5 5.6 6.7 .. 7.9 .. .. .. .. .. ..

5.5 0.2 2.5 2.2 2.0 0.3 4.0 .. 0.5 .. 0.1 0.0 0.2 3.6 .. 1.6 0.3 .. 0.7 0.0 0.2 3.3 1.4 0.9 0.0 1.3 .. 0.0 0.6 1.2 4.8 0.1 2.7 4.1 .. 1.4 0.9 .. .. .. .. 6.2

4.6 0.2 3.1 2.5 1.7 0.4 4.1 0.0 0.6 0.3 0.3 0.0 0.2 6.0 .. 1.6 0.2 .. 1.0 0.1 0.3 3.6 1.9 1.1 0.0 1.0 .. 0.0 0.6 1.2 5.0 0.1 3.0 4.1 .. 1.5 0.9 .. .. .. .. 5.7

4.5 0.2 2.8 2.8 1.9 0.4 4.4 0.0 0.6 0.4 0.2 0.0 0.2 5.2 .. 1.6 0.2 .. 1.3 0.1 0.3 3.7 1.4 1.0 0.0 0.7 0.2 0.0 0.6 1.3 4.6 0.1 3.1 4.4 .. 1.5 0.9 .. .. .. .. 5.3

4.5 .. 3.6 2.8 2.2 0.5 4.8 0.0 0.6 0.3 0.2 0.0 0.2 6.0 .. 1.6 0.2 .. 1.3 0.1 0.3 3.9 1.3 1.0 0.0 0.8 0.2 0.5 0.7 1.3 4.6 0.0 3.0 4.4 .. 1.6 1.2 .. .. 0.1 0.1 3.9

4.8 .. 1.2 2.9 2.3 0.6 5.0 0.0 0.7 0.3 0.2 0.0 0.2 5.4 .. 1.6 0.3 .. 1.7 0.1 0.3 4.0 1.4 1.0 0.0 0.4 0.2 0.9 0.7 1.5 4.7 .. 3.1 4.8 .. 1.6 .. .. .. .. .. 3.9

5.1 0.3 1.2 3.0 2.3 0.3 5.9 0.1 0.6 0.4 0.2 0.0 0.1 5.2 .. 1.7 0.3 .. 2.3 0.1 0.4 4.1 1.7 1.0 0.0 0.4 0.2 0.5 0.6 1.6 4.8 .. 3.1 5.2 .. 1.6 0.6 .. .. .. 0.1 4.3

1 2 http://dx.doi.org/10.1787/888933336488

Public and private expenditure on pensions As a percentage of GDP, 2011 Public

Private

18 16 14 12 10 8 6 4 2 0

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OFFICIAL DEVELOPMENT ASSISTANCE Promoting economic and social development in partner countries has been a principal objective of the OECD since its foundation. The share of national income devoted to official development assistance (ODA) is a key indicator of a country’s commitment to international development. A long-standing United Nations target is that developed countries should devote 0.7% of their gross national income (GNI) to ODA.

Definition ODA is defined as government aid designed to promote the economic development and welfare of developing countries. Loans and credits for military purposes are excluded. Aid may be provided bilaterally, from donor to recipient, or channelled through a multilateral development agency such as the United Nations or the World Bank. Aid includes grants, “soft” loans and the provision of technical assistance. Soft loans are those where the grant element is at least 25% of the total.

countries or territories with per capita incomes below USD 12 745 in 2013. Data on ODA flows are provided by the 29 OECD members of the Development Assistance Committee (DAC).

Comparability Statistics on ODA are compiled according to directives drawn up by the DAC. Each country’s statistics are subject to regular peer reviews by other DAC members. As part of its overall engagement strategy, the DAC encourages donors that are not members of the Committee, to report their aid flows to the OECD/DAC Secretariat. This reporting is voluntary and currently about 20 non-DAC bilateral donors as well as about 35 multilateral agencies (regional development banks, UN agencies, international financial institutions, etc.) provide their data on their outflows to developing countries to the DAC.

The OECD maintains a list of developing countries and territories; only aid to these countries counts as ODA. The list is periodically updated and currently contains over 150

Overview From 1960 to 1990, official development assistance (ODA) flows from the 29 OECD countries of the Development Assistance Committee (DAC) to developing countries rose steadily. By contrast, total ODA as a percentage of DAC countries’ combined gross national income (GNI) fell between 1960 and 1970, and then oscillated between 0.27% and 0.36% for a little over twenty years. Between 1993 and 1997, ODA flows fell by 16% in real terms due to fiscal consolidation in donor countries after the recession of the early 1990s. Aid then started to rise in real terms in 1998, but was still at its historic low as a share of GNI (0.22%) in 2001. Since then, a series of high-profile international conferences have boosted ODA flows. In 2002, the International Conference on Financing for Development, held in Monterrey, Mexico, set firm targets for each donor and marked the upturn of ODA after a decade of decline. In 2005, donors made further commitments to increase their aid at the Gleneagles G8 and UN Millennium + 5 summits. In 2005 and 2006, aid peaked due to exceptional debt relief operations for Iraq and Nigeria. In the past 15 years, net ODA has been rising steadily and has increased by nearly 70% in real terms since 2000. In 2014, net ODA flows from DAC member countries totalled USD 137.2 billion, marking an increase of 1.2% in real terms over 2013 and surpassing the all-time high in 2013. As a share of GNI, ODA was 0.30%.

Sources • OECD (2015), OECD International Development Statistics (Database).

Further information Analytical publications • Keeley, B. (2009), International Migration: The Human Face of Globalisation, OECD Insights, OECD Publishing. • OECD (2015), Development Co-operation Report, OECD Publishing. • OECD (2015), OECD Development Co-operation Peer Reviews, OECD Publishing. • OECD (2015), The Development Dimension, OECD Publishing. • OECD (2014), Perspectives on Global Development, OECD Publishing. • OECD (2012), Aid Effectiveness 2011, Progress in Implementing the Paris Declaration, Better Aid, OECD Publishing.

Statistical publications • OECD (2015), Geographical Distribution of Financial Flows to Developing Countries, OECD Publishing. • OECD and World Trade Organization (2015), Aid for Trade at a Glance, OECD Publishing.

Online databases • OECD International Development Statistics.

Websites • Development finance statistics, www.oecd.org/dac/stats.

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Net official development assistance As a percentage of gross national income Australia Austria Belgium Canada Czech Republic Denmark Finland France Germany Greece Iceland Ireland Italy Japan Korea Luxembourg Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland United Kingdom United States DAC Countries total

Millions of US dollars

2009

2010

2011

2012

2013

2014

2009

2010

2011

2012

2013

2014

0.29 0.30 0.55 0.30 0.12 0.88 0.54 0.47 0.36 0.19 0.35 0.55 0.16 0.18 0.10 1.04 0.82 0.28 1.06 0.09 0.23 0.09 0.15 0.46 1.12 0.44 0.51 0.21 0.31

0.32 0.32 0.64 0.34 0.13 0.91 0.55 0.50 0.39 0.17 0.29 0.52 0.15 0.20 0.12 1.05 0.82 0.26 1.05 0.08 0.29 0.09 0.13 0.43 0.97 0.39 0.57 0.20 0.31

0.34 0.27 0.54 0.32 0.13 0.85 0.53 0.46 0.39 0.15 0.21 0.51 0.20 0.18 0.12 0.97 0.75 0.28 0.96 0.08 0.31 0.09 0.13 0.29 1.02 0.46 0.56 0.20 0.31

0.36 0.28 0.48 0.32 0.12 0.83 0.53 0.45 0.37 0.13 0.22 0.47 0.14 0.17 0.14 1.00 0.71 0.28 0.93 0.09 0.28 0.09 0.13 0.16 0.97 0.47 0.56 0.19 0.28

0.33 0.27 0.45 0.28 0.11 0.85 0.54 0.41 0.38 0.10 0.25 0.46 0.17 0.23 0.13 1.00 0.67 0.26 1.07 0.10 0.23 0.09 0.13 0.17 1.01 0.46 0.71 0.18 0.30

0.31 0.28 0.46 0.24 0.11 0.86 0.60 0.37 0.42 0.11 0.22 0.38 0.19 0.19 0.13 1.06 0.64 0.27 1.00 0.09 0.19 0.09 0.13 0.13 1.09 0.51 0.70 0.19 0.30

2 762 1 142 2 610 4 000 215 2 810 1 290 12 602 12 079 607 34 1 006 3 297 9 467 816 415 6 426 309 4 081 375 513 75 71 6 584 4 548 2 310 11 283 28 831 120 558

3 826 1 208 3 004 5 214 228 2 871 1 333 12 915 12 985 508 29 895 2 996 11 058 1 174 403 6 357 342 4 372 378 649 74 59 5 949 4 533 2 300 13 053 29 656 128 369

4 983 1 111 2 807 5 459 250 2 931 1 406 12 997 14 093 425 26 914 4 326 11 086 1 325 409 6 344 424 4 756 417 708 86 63 4 173 5 603 3 051 13 832 30 966 134 971

5 403 1 106 2 315 5 650 220 2 693 1 320 12 028 12 939 327 26 808 2 737 10 605 1 597 399 5 523 449 4 753 421 581 80 58 2 037 5 240 3 052 13 891 30 652 126 911

4 846 1 171 2 300 4 947 211 2 927 1 435 11 339 14 228 239 35 846 3 430 11 582 1 755 429 5 435 457 5 581 487 488 86 62 2 348 5 827 3 200 17 871 31 267 134 832

4 382 1 235 2 448 4 240 212 3 003 1 635 10 620 16 566 247 37 816 4 009 9 266 1 857 423 5 573 506 5 086 452 430 83 62 1 877 6 233 3 522 19 306 33 096 137 222

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Distribution of net ODA from all sources by income group and by region Million US dollars By income group Least developed countries Other low-income countries Lower middle-income countries Upper middle-income countries More advanced developing countries By region Europe North of Sahara South of Sahara North and Central America South America Far East Asia South and Central Asia Middle East Oceania

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

25 560 1 262 17 100 14 946 540

25 911 1 471 27 111 32 461 377

28 847 1 521 31 985 20 333 641

33 953 2 126 23 155 20 613 715

39 068 2 473 24 958 23 562 858

40 222 2 986 30 512 15 814 883

44 268 2 849 29 607 13 615 754

45 204 3 670 29 753 18 514 16

42 722 4 143 30 072 16 566 27

47 968 4 635 37 035 15 221 37

43 726 3 933 37 549 17 687 ..

3 627 3 176 26 222 3 437 2 938 6 006 9 340 7 620 939

4 062 2 667 32 415 3 271 2 855 8 391 11 655 25 512 1 161

5 082 2 854 40 869 3 497 3 322 6 529 11 430 14 203 1 199

4 334 3 370 34 720 3 484 2 940 7 286 14 090 14 518 1 309

5 379 4 226 39 627 4 322 3 754 7 019 15 982 19 914 1 533

5 794 3 176 42 465 4 352 3 773 8 249 18 465 10 379 1 560

5 892 2 660 43 483 6 809 2 780 7 489 18 708 9 486 1 868

8 945 4 068 45 467 5 890 4 252 5 316 20 238 11 363 2 240

8 076 4 740 44 418 4 706 4 259 6 133 17 627 8 736 2 179

7 437 8 784 46 014 4 616 3 924 5 858 20 628 16 904 2 149

8 613 7 354 44 321 4 439 4 212 6 173 19 754 25 081 1 863

1 2 http://dx.doi.org/10.1787/888933336823

Net official development assistance 2014 As a percentage of gross national income 1.2

Millions of US dollars 20000

33 096

18000 1.0 0.8

16000 14000 UN target 0.7 12000

0.6

10000 8000

0.4

Average country effort 0.39

0.2

6000 4000 2000

0.0

0

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TAXES ON THE AVERAGE WORKER Taxes

Taxes on the average worker measure the ratio between the amount of taxes paid by the worker and the employer on the country average wage and the corresponding total labour cost for the employer. This tax wedge measures the extent to which the tax system on labour income may discourage employment.

the tax laws in each country. These tax wedge measures are therefore derived from a modelling exercise rather than from the direct observation of taxes actually paid by workers and their employers.

Definition The taxes included are personal income taxes, employees’ social security contributions and employers’ social security contributions. For the few countries that have them, it also includes payroll taxes. The amount of these taxes paid in relation to the employment of one average worker is expressed as a percentage of their labour cost (gross wage plus employers’ social security contributions and payroll tax). An average worker is defined as somebody who earns the average income of full-time workers of the country concerned in Sectors B-N of the International Standard Industrial Classification (ISIC Rev.4). The average worker is considered single without children, meaning that he or she does not receive any tax relief in respect of a spouse, unmarried partner or child.

Comparability The types of taxes included are fully comparable across countries. They are based on common definitions agreed by all OECD countries. While the income levels of workers in Sectors B-N differ across countries, they can be regarded as corresponding to comparable types of work in each country. The information on the average worker’s income level is supplied by the Ministries of Finance in all OECD countries and is based on national statistical surveys. The amount of taxes paid by the single worker is calculated by applying

Overview In 2014, taxes on an average single worker without children represented 36% of their total labour costs across OECD countries on average. This tax wedge ranged between 7% in Chile to around 56% in Belgium. The average tax wedge has decreased by 0.7 percentage points since 2000. However, there are important differences between countries. Of the 34 OECD countries, 11 countries have experienced an overall increase in the taxes on an average worker since 2000. The countries with the largest increases were Iceland, Japan, Korea and Mexico. Of the 25 countries that have experienced an overall decline, the largest decreases were in Denmark, Hungary, Israel and Sweden.

196

Sources • OECD (2015), Taxing Wages, OECD Publishing.

Further information Analytical publications • OECD (2011), “Taxation and Employment”, OECD Tax Policy Studies, No. 21, OECD Publishing. • OECD (2007), Benefits and Wages, OECD Publishing. • OECD (2006), “Encouraging Savings Through Taxpreferred Accounts”, OECD Tax Policy Studies, No. 15, OECD Publishing. • Torres, C., K. Mellbye and B. Brys (2012), “Trends in Personal Income Tax and Employee Social Security Contribution Schedules”, OECD Taxation Working Papers, No. 12.

Statistical publications • OECD (2015), Revenue Statistics, OECD Publishing. • OECD and Economic Commission for Latin America and the Caribbean (2015), Latin American Economic Outlook, OECD Publishing.

Online databases • OECD Tax Statistics.

Websites • Tax and Benefit Systems: OECD indicators, www.oecd.org/ els/social/workincentives. • Tax policy analysis, www.oecd.org/tax/tax-policy. • Taxing wages (supplementary material), www.oecd.org/ tax/tax-policy/taxing-wages. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • TAXES TAXES ON THE AVERAGE WORKER

Taxes on the average worker As a percentage of labour cost Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

28.2 47.4 55.7 31.7 7.0 43.2 42.4 42.3 44.8 50.1 53.2 39.9 50.8 31.5 24.4 27.7 46.0 27.4 16.4 33.5 16.7 37.2 19.5 38.1 38.2 37.4 42.5 46.2 38.6 48.2 22.4 42.2 33.8 29.9 .. 36.3 .. .. .. .. .. ..

28.2 48.3 55.4 31.9 7.0 43.5 41.0 41.5 44.2 50.3 52.2 41.4 51.7 31.9 24.1 26.4 46.3 27.3 17.0 33.9 15.2 38.8 19.7 38.1 38.4 37.4 42.2 46.3 38.8 48.4 22.2 42.8 33.9 29.8 .. 36.3 .. .. .. .. .. ..

28.5 48.1 55.5 31.9 7.0 43.7 40.9 39.9 44.4 50.5 52.1 41.2 51.1 32.1 23.5 25.5 45.9 27.7 17.3 34.7 14.7 38.9 20.0 37.2 38.7 36.8 38.0 45.6 39.0 48.1 22.2 42.8 33.9 29.8 .. 36.1 .. .. .. .. .. ..

28.3 48.5 55.5 31.8 7.0 42.5 41.0 39.0 44.0 49.7 52.3 42.3 51.9 31.8 23.0 24.3 46.1 28.8 18.2 35.3 15.0 38.4 20.4 37.4 39.0 37.5 38.3 45.3 39.1 47.8 22.1 42.7 34.0 29.9 .. 36.1 .. .. .. .. .. ..

27.7 48.8 55.6 31.3 7.0 42.9 41.1 39.0 43.9 49.7 51.8 42.1 54.5 30.5 22.2 24.9 46.4 29.3 19.7 36.3 15.9 38.7 21.1 37.5 38.2 37.3 38.4 43.3 39.0 45.3 22.4 42.7 34.1 30.3 .. 36.1 .. .. .. .. .. ..

26.9 49.0 55.9 31.3 7.0 43.4 40.9 38.4 43.8 49.8 51.3 41.5 54.1 30.9 22.3 22.9 46.6 29.5 20.0 34.7 15.1 39.2 20.5 37.6 34.7 36.9 38.8 42.9 38.0 44.8 21.9 39.9 32.8 29.8 .. 35.7 .. .. .. .. .. ..

26.7 47.9 55.7 30.5 7.0 42.0 39.5 39.2 42.5 49.8 50.8 41.3 53.1 30.5 24.7 21.3 46.8 29.2 19.5 33.9 15.3 38.0 18.1 37.3 34.1 36.5 37.7 42.2 38.3 43.2 22.0 37.4 32.4 30.1 .. 35.1 .. .. .. .. .. ..

26.8 48.2 55.9 30.4 7.0 42.1 38.3 40.1 42.3 49.9 49.1 40.1 46.6 33.4 25.8 20.7 47.2 30.2 20.1 34.3 15.5 38.1 17.0 37.3 34.2 37.1 37.9 42.5 39.7 42.8 22.1 37.4 32.6 30.5 .. 35.1 .. .. .. .. .. ..

26.7 48.5 56.1 30.7 7.0 42.6 38.4 40.3 42.3 50.0 49.7 43.2 49.5 34.1 25.8 20.8 47.6 30.8 20.5 36.3 18.7 38.0 15.9 37.6 34.3 38.0 38.8 42.6 40.0 42.8 22.3 37.4 32.5 29.7 .. 35.6 .. .. .. .. .. ..

27.2 48.8 56.0 30.8 7.0 42.5 38.5 40.4 42.5 50.1 49.6 42.9 49.5 33.8 25.9 20.4 47.7 31.3 21.0 36.0 19.0 38.8 16.4 37.4 35.5 37.6 39.6 42.5 40.6 42.9 22.1 37.4 32.1 29.8 .. 35.7 .. .. .. .. .. ..

27.4 49.2 55.7 31.0 7.0 42.5 38.2 39.9 43.1 48.9 49.2 41.6 49.0 34.1 27.1 20.4 47.9 31.6 21.3 37.2 19.2 37.0 16.9 37.3 35.6 41.4 41.1 42.4 40.7 43.0 22.1 37.6 31.4 31.4 .. 35.9 .. .. .. .. .. ..

27.7 49.4 55.6 31.5 7.0 42.6 38.1 40.0 43.9 48.4 49.3 40.4 49.0 33.5 28.2 20.5 48.2 31.9 21.5 37.6 19.5 37.7 17.2 37.0 35.6 41.2 41.2 42.5 40.7 42.5 22.2 38.2 31.1 31.5 .. 36.0 .. .. .. .. .. ..

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Taxes on the average worker As a percentage of labour cost CAN

FRA

DEU

ITA

JPN

GBR

USA

55 50 45 40 35 30 25 20

2000

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

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GOVERNMENT • TAXES

TOTAL TAX REVENUE Total tax revenue as a percentage of GDP indicates the share of a country’s output that is collected by the government through taxes. It can be regarded as one measure of the degree to which the government controls the economy’s resources.

Definition

Comparability The tax revenue data are collected in a way that makes them as internationally comparable as possible. Country representatives have agreed on the definitions of each type of tax and how they should be measured in all OECD countries, and they are then responsible for submitting data to the OECD that conform to these rules.

Taxes are defined as compulsory, unrequited payments to general government. They are unrequited in the sense that benefits provided by government to taxpayers are not normally in proportion to their payments. Data on total tax revenue refer to the revenues collected from taxes on income and profits, social security contributions, taxes levied on goods and services, payroll taxes, taxes on the ownership and transfer of property, and other taxes. Taxes on incomes and profits cover taxes levied on the net income or profits (gross income minus allowable tax reliefs) of individuals and enterprises. They also cover taxes levied on the capital gains of individuals and enterprises, and gains from gambling. Taxes on goods and services cover all taxes levied on the production, extraction, sale, transfer, leasing or delivery of goods, and the rendering of services, or on the use of goods or permission to use goods or to perform activities. They consist mainly of value added and sales taxes. Note that the sum of taxes on goods and services and taxes on income and profits is less than the figure for total tax revenues.

Overview

Sources • OECD (2015), Revenue Statistics, OECD Publishing.

The tax burden continued to rise in OECD countries in 2014, increasing by 0.2 percentage points to an average 34.4% of GDP. The increase is calculated by applying the unweighted average percentage change for 2014 in the 30 countries providing data for that year to the overall average tax to GDP ratio in 2013. The rate of increase was lower than in 2013 and 2012 when the average tax burdens were 34.2% and 33.8%. Of those 30 countries, the total tax revenues as a percentage of GDP rose in 16 and fell in 14 compared with 2013.

Further information

The 2014 tax burden is the highest ever recorded OECD average tax to GDP ratio since the OECD began compiling this measure in 1965. Historically, the tax burden reached its previous peak of 34.2% of GDP in the year 2000. It then fell back slightly between 2001 and 2004 but rose again between 2005 and 2007 to an average of 34.1%. During the financial crisis, the OECD tax burden declined sharply to 32.7% in 2009 (a fall of 1.4 percentage points) before rising over the next 5 years to 34.4% in 2014 (an increase of 1.7 percentage points).

• OECD and Council of Europe (France) (2011), The Multilateral Convention on Mutual Administrative Assistance in Tax Matters, OECD Publishing. • OECD (2010), Model Tax Convention on Income and on Capital: Condensed Version, OECD Publishing.

198

Analytical publications • OECD (2014), Consumption Tax Trends, OECD Publishing. • OECD (2013), Global Forum on Transparency and Exchange of Information for Tax Purposes, OECD Publishing. • OECD (2011), OECD Tax Policy Studies, OECD Publishing.

Statistical publications • OECD (2015), Taxing Wages, OECD Publishing.

Methodological publications

Online databases • OECD Tax Statistics.

Websites • Global Forum on Transparency and Exchange of Information for Tax Purposes, www.oecd.org/tax/ transparency. OECD FACTBOOK 2015-2016 © OECD 2016

GOVERNMENT • TAXES TOTAL TAX REVENUE

Total tax revenue As a percentage of GDP Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

2014

29.8 42.5 43.6 32.8 19.0 33.5 45.4 31.1 43.3 42.1 34.4 32.5 37.4 34.3 27.4 34.2 39.7 25.8 22.0 38.0 16.2 35.2 33.2 42.3 33.2 31.4 32.7 37.2 33.4 45.2 27.5 24.6 33.3 24.9 .. 33.5 31.7 .. .. .. .. ..

29.9 42.3 43.1 32.7 18.7 34.4 45.6 30.8 42.4 42.0 34.6 31.0 37.4 35.6 28.3 33.5 40.1 25.3 22.7 38.1 17.1 34.6 33.1 41.6 32.6 31.5 32.4 37.3 33.3 45.5 26.8 25.9 32.9 24.4 .. 33.5 31.2 .. .. .. .. ..

30.3 41.8 43.2 32.5 19.1 34.7 46.4 31.1 41.8 42.2 33.9 30.0 37.2 36.6 29.1 33.5 39.3 26.1 22.0 37.0 16.8 34.8 34.1 42.3 32.2 30.3 31.4 37.4 34.3 45.6 26.5 24.1 33.4 24.6 .. 33.4 32.1 .. .. .. .. ..

29.9 40.9 43.1 32.3 20.7 34.5 48.0 29.9 42.1 42.8 33.9 31.2 36.8 39.4 29.2 33.8 39.1 27.3 22.5 38.3 17.7 36.1 36.0 42.6 33.3 30.9 31.2 38.0 35.3 46.6 26.5 24.3 33.8 25.9 .. 33.9 33.1 .. .. .. .. ..

29.5 40.4 42.8 32.6 22.0 34.1 46.4 30.4 42.2 43.1 34.5 30.3 36.7 40.4 31.0 34.4 40.6 28.1 23.6 36.3 17.9 36.4 35.4 42.8 33.9 31.5 29.3 37.6 36.1 46.0 26.4 24.5 34.4 26.6 .. 34.1 33.1 .. .. .. .. ..

29.7 40.5 42.6 32.3 22.8 34.3 46.4 31.1 41.5 42.4 34.9 31.2 39.6 38.7 30.4 34.3 41.7 28.5 24.8 36.6 17.6 36.1 34.0 42.1 34.8 32.0 29.2 37.1 36.5 45.0 26.1 24.1 34.1 26.7 .. 34.1 33.4 .. .. .. .. ..

27.0 41.4 43.0 31.5 21.4 33.5 44.9 31.3 41.2 42.2 35.4 31.0 39.5 35.1 28.6 31.9 41.6 28.5 24.6 37.2 20.7 36.5 33.3 41.5 34.5 31.9 29.1 36.4 32.3 44.0 26.7 24.2 34.0 25.2 .. 33.6 33.8 .. .. .. .. ..

25.8 41.0 42.1 31.4 17.2 32.4 45.2 34.9 40.9 41.3 36.1 30.8 39.0 32.0 27.6 29.7 42.1 27.0 23.8 39.0 17.2 35.4 30.5 41.2 31.5 30.0 28.9 36.2 29.8 44.1 27.1 24.6 32.3 23.0 .. 32.7 33.1 .. .. .. .. ..

25.6 40.8 42.4 30.4 19.5 32.5 45.3 33.2 40.8 41.6 35.0 32.0 37.3 33.3 27.5 30.4 41.8 27.6 23.4 38.1 18.5 36.2 30.6 41.9 31.4 30.6 28.1 36.9 29.9 43.2 26.5 26.2 32.8 23.2 .. 32.8 33.2 .. .. .. .. ..

26.3 41.0 43.0 30.2 21.2 33.4 45.4 31.9 42.0 42.9 35.7 33.5 36.5 34.4 27.4 30.8 41.9 28.6 24.2 37.9 19.5 35.9 30.9 42.0 32.0 32.5 28.7 36.5 31.3 42.5 27.0 27.8 33.6 23.6 .. 33.3 35.0 .. .. .. .. ..

27.3 41.7 44.0 30.7 21.5 33.8 46.4 32.1 42.7 44.1 36.4 34.5 38.6 35.2 27.9 29.7 43.9 29.4 24.8 38.8 19.5 36.1 32.4 41.5 32.3 32.0 28.5 36.8 32.1 42.6 26.9 27.6 33.0 24.1 .. 33.8 35.6 .. .. .. .. ..

27.5 42.5 44.7 30.5 20.0 34.3 47.6 31.8 43.7 45.0 36.5 34.4 38.4 35.9 29.0 30.6 43.9 30.3 24.3 38.4 19.7 36.7 31.4 40.5 31.9 34.5 30.4 36.8 32.7 42.8 26.9 29.3 32.9 25.4 .. 34.2 35.7 .. .. .. .. ..

.. 43.0 44.7 30.8 19.8 33.5 50.9 32.9 43.9 45.2 36.1 35.9 38.5 38.7 29.9 31.1 43.6 .. 24.6 37.8 19.5 .. 32.4 39.1 .. 34.4 31.0 36.6 33.2 42.7 26.6 28.7 32.6 26.0 .. 34.4 .. .. .. .. .. ..

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Total tax revenue As a percentage of GDP 2014 or latest available year

2002

60

50

40

30

20

10

0

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HEALTH HEALTH STATUS LIFE EXPECTANCY INFANT MORTALITY SUICIDES

RISK FACTORS SMOKING ALCOHOL CONSUMPTION OVERWEIGHT AND OBESITY

RESOURCES DOCTORS NURSES HEALTH EXPENDITURE

HEALTH • HEALTH STATUS

LIFE EXPECTANCY Health status

Life expectancy at birth continues to increase steadily in OECD countries, going up on average by 3 to 4 months each year, with no sign of slowing down. These gains in longevity can be attributed to a number of factors including improved lifestyle and better education, and progress in health care. Higher national income (as measured by GDP per capita) is generally associated with higher life expectancy at birth,

although the relationship is less pronounced at higher levels of national income. Life expectancy in OECD countries varies not only by gender, but also by socio-economic status as measured, for instance, by education level. A higher education level not only provides the means to improve the socio-economic conditions in which people live and work, but may also promote the adoption of healthier lifestyles and facilitate access to appropriate health care.

Definition

Overview In 2013, life expectancy on average across OECD countries reached 80.5 years, an increase of more than ten years since 1970. Japan, Spain and Switzerland lead a large group of 25 OECD countries in which life expectancy at birth now exceeds 80 years. Although the life expectancy in emerging economies such as India, Indonesia, Brazil and China remains well below the OECD average, these economies have achieved considerable gains in longevity over the past decades, with the level converging rapidly towards the OECD average. There has been much less progress in countries such as South Africa (due mainly to the epidemic of HIV/AIDS), and Russia (due mainly to the impact of the economic transition in the 1990s and a rise in risk increasing behaviours among men, notably rising alcohol consumption). The gender gap in life expectancy stood at 5.3 years on average across OECD countries in 2013, with life expectancy reaching 77.8 years among men and 83.1 years among women. While the gender gap in life expectancy increased substantially in many OECD countries during the 1970s and early 1980s to reach a peak of almost seven years in the mid-1980s, it has narrowed during the past 25 years, reflecting higher gains in life expectancy among men than among women. On average among 16 OECD countries for which recent data are available, people with the highest level of education can expect to live six years longer than people with the lowest level of education at age 30 (53 years versus 47 years). These differences in life expectancy by education level are particularly pronounced for men, with an average gap of almost eight years. The differences are especially large in Central and Eastern European countries (Slovak Republic, Estonia, Czech Republic, Poland and Hungary), where the life expectancy gap between higher and lower educated men is more than ten years. This is largely explained by the greater prevalence of risk factors among lower educated men, such as tobacco and alcohol use. Differences in other countries such as Sweden, Italy, the Netherlands and Norway are less pronounced.

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Life expectancy at birth measures how long, on average, people would live based on a given set of age-specific death rates. However, the actual age-specific death rates of any particular birth cohort cannot be known in advance. If agespecific death rates are falling (as has been the case over the past decades), actual life spans will be higher than life expectancy calculated with current death rates.

Comparability The methodology used to calculate life expectancy can vary slightly between countries. This can change a country’s estimates by a fraction of a year. Life expectancy at birth for the total population is calculated by the OECD Secretariat for all OECD countries, using the unweighted average of life expectancy of men and women.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • OECD (2015), How’s Life? Measuring Well-being, OECD Publishing. • OECD (2010), Health Care Systems: Efficiency and Policy Settings, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • Health at a Glance (supplementary material), www.oecd.org/health/healthataglance. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • HEALTH STATUS LIFE EXPECTANCY

Life expectancy at birth Number of years 2013 or latest available year

1970 or first available year

90 85 80 75 70 65 60 55 50 45 40

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Variation in life expectancy by sex Number of years, 2013 or latest available year Women

Men

Variation between women and men

100 90 80 70 60 50 40 30 20 10 0 1 2 http://dx.doi.org/10.1787/888933335784

Gap in life expectancy at age 30 by sex and educational level Gap in years, 2012 or latest year Women

Men SVK EST CZE POL HUN SVN OECD (16) GRC ISR DNK FIN MEX PRT NOR NLD ITA SWE 14

12

10

8

6

4

2

0

0

2

4

6

8

10

12

14

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HEALTH • HEALTH STATUS

INFANT MORTALITY Infant mortality, the rate at which babies and children of less than one year of age die, reflects the effect of economic and social conditions on the health of mothers and newborns, the social environment, individual lifestyles as well as the characteristics and effectiveness of health systems. Many studies use infant mortality as a health outcome to examine the effect of a variety of medical and non-medical determinants of health. Although most analyses show that higher health spending tends to be associated with lower infant mortality, the fact that some countries with a high level of health expenditure do not exhibit low levels of infant mortality suggests that more health spending is not necessarily required to obtain better results.

Overview In most OECD countries, infant mortality is low and there is little difference in rates. In 2013, the average in OECD countries was less than four deaths per 1 000 live births, with rates being the lowest in Iceland, Slovenia, Finland, Estonia and Japan. A small group of OECD countries still have comparatively high infant mortality (Mexico, Turkey and Chile), although in these three countries infant mortality has reduced considerably over the past few decades.

Definition The infant mortality rate is the number of deaths of children under one year of age, expressed per 1 000 live births.

Comparability Some of the international variation in infant mortality rates is related to variations in registering practices for very premature infants. While some countries register all live births including very small babies with low odds of survival, several countries apply a minimum threshold of a gestation period of 22 weeks (or a birth weight threshold of 500 grams) for babies to be registered as live births. To remove this data comparability limitation, the data are based on a minimum threshold of 22 weeks of gestation period (or 500 grams birth weight) for a majority of OECD countries that have provided these data. However, the data for some countries (e.g. Canada and Australia) continue to be based on all registered live births, resulting in some over-estimation.

In some of the emerging economies (India, South Africa and Indonesia), infant mortality remains above 20 deaths per 1 000 live births. In India, one-in-twenty-five children die before their first birthday, although the rates have fallen sharply over the past few decades. Infant mortality rates have also reduced greatly in Indonesia. In the United States, the reduction in infant mortality has been slower than in most other OECD countries. In 2000, the US rate was below the OECD average, but it is now higher. In OECD countries, around two-thirds of the deaths that occur during the first year of life are neonatal deaths (i.e., during the first four weeks). Birth defects, prematurity and other conditions arising during pregnancy are the main factors contributing to neonatal mortality in developed countries. With an increasing number of women deferring childbearing and a rise in multiple births linked with fertility treatments, the number of pre-term births has tended to increase. In a number of higher-income countries, this has contributed to a levelling-off of the downward trend in infant mortality over the past few years. For deaths beyond a month (post-neonatal mortality), there tends to be a greater range of causes – the most common being SIDS (sudden infant death syndrome), birth defects, infections and accidents.

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Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • OECD (2015), How’s Life? Measuring Well-being, OECD Publishing. • OECD (2011), Doing Better for Families, OECD Publishing. • OECD (2009), Doing Better for Children, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • Health at a Glance (supplementary material), www.oecd.org/health/healthataglance. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • HEALTH STATUS INFANT MORTALITY

Infant mortality rates Deaths per 1 000 live births, 2013 or latest available year 45

40

35

30

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933335136

Trend in infant mortality in selected OECD countries Deaths per 1 000 live births, 2000-13 or latest available period

Chile

Mexico

Turkey

United States

OECD

45 40 35 30 25 20 15 10 5 0

2000

2001

2002

2003

2004

2005

2006

2007

2008

2009

2010

2011

2012

2013

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HEALTH • HEALTH STATUS

SUICIDES Suicide is a significant cause of death in many OECD countries, accounting for over 150 000 deaths in 2013. A complex set of reasons may explain why some people choose to attempt or commit suicide. A high proportion of people who have attempted or committed suicide are suffering from psychiatric disorders such as severe depression, bipolar disorder and schizophrenia. The social context in which an individual lives is also important. Low income, alcohol and drug abuse, unemployment and social isolation are all associated with higher rates of suicide. Early detection of psycho-social problems in high-risk groups by families and health professionals is an important part of suicide prevention campaigns, together with the provision of effective support and treatment. Many countries are developing national strategies for prevention, focusing on at-risk groups.

Overview Suicide rates in 2013 were lowest in Turkey, Greece, Mexico, Italy and Israel, at seven or fewer deaths per 100 000 population, although the number of suicides in certain countries may be under-reported because of the stigma associated with the act or data unreliability associated with reporting criteria. Suicide rates are also low in South Africa and Brazil. Korea had the highest suicide rate with nearly 30 deaths per 100 000 population, followed by Russia, Hungary, Japan and Slovenia with nearly 20 deaths per 100 000 population. Mortality rates from suicide are three-to-four times greater for men than for women across OECD countries. In Poland and the Slovak Republic, men are seven times more likely to commit suicide than women. The gender gap is narrower for attempted suicides, reflecting the fact that women tend to use less fatal methods than men. Suicide is also related to age, with young people aged under 25 and elderly people especially at risk. While suicide rates among the latter have generally declined over the past two decades, less progress has been observed among younger people. Since 1990, suicide rates have decreased by around 30% across OECD countries, with the rates being halved in countries such as Hungary, Denmark, Luxembourg and Finland. In Estonia, after an initial rise in the early 1990s, the rates have also fallen sharply. On the other hand, death rates from suicides have increased in Korea, Chile, Mexico, Russia, Greece, Poland, Japan and the Netherlands. In Japan, there was a sharp rise in the mid-to-late 1990s, coinciding with the Asian financial crisis, but rates have started to come down in recent years. In Korea, suicide rates rose steadily over the past two decades peaking around 2010, before starting to come down. Suicide is the number one cause of death among teenagers in Korea.

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Definition The World Health Organization defines suicide as an act deliberately initiated and performed by a person in the full knowledge or expectation of its fatal outcome. Mortality rates have been directly age-standardised to the 2010 OECD population to remove variations arising from differences in age structures across countries and over time. The source is the WHO Mortality Database. Deaths from suicide are classified to ICD-10 codes X60-X84.

Comparability Comparability of data between countries is affected by a number of reporting criteria, including how a person’s intention of killing themselves is ascertained, who is responsible for completing the death certificate, whether a forensic investigation is carried out, and the provisions for confidentiality of the cause of death. The number of suicides in certain countries may be under-estimated because of the stigma that is associated with the act, or because of data issues associated with reporting criteria. Caution is required therefore in interpreting variations across countries.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • OECD (2015), Mental Health and Work, OECD Publishing. • OECD (2015), OECD Health Working Papers, OECD Publishing. • OECD (2014), Making Mental Health Count, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • Mental Health, www.oecd.org/health/mental-health.htm. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • HEALTH STATUS SUICIDES

Suicide rates Age-standardised rates per 100 000 population, 2013 or latest available year 30

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933335565

Trends in suicide rates Age-standardised rates per 100 000 population Estonia

Finland

Greece

Hungary

Japan

Korea

Mexico

United States

50 45 40 35 30 25 20 15 10 5 0

1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 1 2 http://dx.doi.org/10.1787/888933335880

Change in suicide rates Percentage, 1990-2013 or latest available period 60

231

40

20

0

-20

-40

-60

1 2 http://dx.doi.org/10.1787/888933336003

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HEALTH • RISK FACTORS

SMOKING Risk factors

Tobacco kills nearly 6 million people each year, of whom more than 5 million are from direct tobacco use and more than 600 000 are non-smokers exposed to second-hand smoke. Tobacco is a major risk factor for at least two of the leading causes of premature mortality – cardiovascular diseases and cancer, increasing the risk of heart attack, stroke, lung cancer, cancers of the larynx and mouth, and pancreatic cancer, among others. In addition, it is a dominant contributing factor for respiratory diseases such as chronic obstructive pulmonary disease. Smoking in pregnancy can lead to low birth weight and illness among

Overview The proportion of daily smokers in the adult population varies greatly, even between neighbouring countries. Nineteen of 34 OECD countries had less than 20% of the adult population smoking daily in 2013. Rates were lowest in Sweden, Iceland, Mexico and Australia (less than 13%). Rates were also less than 13% in Brazil and India, although the proportion of smokers among men is high in India at 23%. On the other hand, smoking rates remain high in Greece in both men and women, and in Indonesia where more than one in two men smoke daily. Smoking prevalence is higher among men than among women in all OECD countries except in Sweden and Iceland. The gender gap in smoking rates is particularly large in Korea, Japan and Turkey, as well as in Russia, India, Indonesia, South Africa and China. Since 2000, smoking rates across most OECD countries have continued to decline, although other forms of smokeless tobacco use, such as snuff in Sweden, are not taken into account. On average, smoking rates have decreased by about one fourth since 2000, from 26% to 20% in 2013. Large reductions occurred in Norway, Iceland, Denmark, Sweden and Ireland, as well as in India. Much of the decline in tobacco use can be attributed to policies aimed at reducing tobacco consumption through public awareness campaigns, advertising bans, increased taxation, and restriction of smoking in public spaces and restaurants, in response to rising rates of tobacco-related diseases. As governments continue to reinforce their anti-tobacco policies, new strategies such as plain packaging for tobacco products aimed to restrict branding have been implemented (e.g. in Australia) and are being adopted by an increasing number of countries. There is strong evidence of socio-economic differences in smoking and mortality. People in less affluent social groups have a greater prevalence and intensity of smoking and a higher all-cause mortality rate and lower rates of cancer survival.

208

infants. Smoking remains the largest avoidable risk factor for health in OECD countries and worldwide.

Definition The proportion of daily smokers is defined as the percentage of the population aged 15 years and over who report smoking every day.

Comparability International comparability is limited due to the lack of standardisation in the measurement of smoking habits in health interview surveys across OECD countries. Variations remain in the age groups surveyed, the wording of questions, response categories and survey methodologies (e.g. in a number of countries, respondents are asked if they smoke regularly, rather than daily; and if they smoke cigarettes rather than all types of tobacco). In addition, selfreports of behaviours may suffer from social desirability bias that may potentially limit cross-country comparisons.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • OECD (2015), Cardiovascular Disease and Diabetes: Policies for Better Health and Quality of Care, OECD Publishing. • OECD (2013), Cancer Care: Assuring Quality to Improve Survival, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • Health at a Glance (supplementary material), www.oecd.org/health/healthataglance. • Health Care Quality Indicators - Cardiovascular Disease and Diabetes, www.oecd.org/els/health-systems/hcqicardiovascular-disease-and-diabetes.htm. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RISK FACTORS SMOKING

Adult population smoking daily As a percentage of adult population, 2013 or latest available year 40 35 30 25 20 15 10 5 0

1 2 http://dx.doi.org/10.1787/888933335510

Change in smoking rates Percentage change over the period 2000-13 or latest available period 20 10 0 -10 -20 -30 -40 -50 -60

1 2 http://dx.doi.org/10.1787/888933335872

Adult population smoking daily by gender Percentage of adult population, 2013 or latest available year Men

Women

80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933335998

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HEALTH • RISK FACTORS

ALCOHOL CONSUMPTION The health burden related to harmful alcohol consumption, both in terms of morbidity and mortality, is considerable. Alcohol use is associated with numerous harmful health and social consequences, including an increased risk of a range of cancers, stroke, and liver cirrhosis, among others. Foetal exposure to alcohol increases the risk of birth defects and intellectual impairment. Alcohol also contributes to death and disability through accidents and injuries, assault, violence, homicide and suicide.

not include unrecorded alcohol consumption, such as home production.

Definition Alcohol consumption is defined as annual sales of pure alcohol in litres per person aged 15 years and over. Surveybased estimates of the amount of alcohol drunk by the 20% heaviest drinkers rely on the data analysis of the latest available national health surveys for 13 OECD countries.

Comparability The methodology to convert alcoholic drinks to pure alcohol may differ across countries. Official statistics do

Overview Alcohol consumption stands at 8.9 litres per adult per year, on average, across OECD countries, based on the most recent data available. Austria, Estonia and the Czech Republic, reported the highest consumption of alcohol with 11.5 litres or more per adult per year in 2013. The lowest alcohol consumption was recorded in Turkey and Israel, as well as in Indonesia and India, where religious and cultural traditions restrict the use of alcohol in some population groups. Although average alcohol consumption has gradually fallen in many OECD countries since 2000, it has risen in Poland, Chile, Sweden, Mexico, Norway, the U n i t e d S t a t e s , Fi n l a n d , C a n a d a , I c e l a n d a n d New Zealand, as well as in China, India, Indonesia, Russia and South Africa. However, national aggregate data does not permit to identify individual drinking patterns and the populations at risk. OECD analysis based on individuallevel data show that hazardous drinking and heavy episodic drinking are on the rise among young people and women especially. Men of low socioeconomic status are more likely to drink heavily than those of a higher socioeconomic status, while the opposite is observed in women. Alcohol consumption is highly concentrated, as the large majority of alcohol is consumed by the 20% of the population who drink the most, with some variation across countries. The 20% heaviest drinkers in Hungary consume about 90% of all alcohol, while in France the share is about 50%.

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Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • Devaux, M. and F. Sassi (2015), “Alcohol consumption and harmful drinking: Trends and social disparities across OECD countries”, OECD Health Working Papers, No. 79, OECD Publishing, Paris. • OECD (2015), Tackling Harmful Alcohol Use, OECD Publishing. • WHO (2011), Global Status Report on Alcohol and Health, World Health Organization, Geneva.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • Health at a Glance (supplementary material), www.oecd.org/health/healthataglance. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. • The Economics of Prevention, www.oecd.org/health/ prevention. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RISK FACTORS ALCOHOL CONSUMPTION

Alcohol consumption among population aged 15 and over Litres per capita, 2013 or latest available year 14 12 10 8 6 4 2 0

1 2 http://dx.doi.org/10.1787/888933334837

Change in alcohol consumption among population aged 15 and over Percentage change in litres per capita over the period 2000-2013 or latest available period 80 70 60 50 40 30 20 10 0 -10 -20 -30 -40

1 2 http://dx.doi.org/10.1787/888933335756

Share of total alcohol consumed by the 20% of the population who drink the most Share, 2012 or latest year available 100% 90% 80% 70% 60% 50% 40% 30% 20% 10% 0%

1 2 http://dx.doi.org/10.1787/888933335903

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HEALTH • RISK FACTORS

OVERWEIGHT AND OBESITY Obesity is a known risk factor for numerous health problems, including hypertension, high cholesterol, diabetes, cardiovascular diseases, respiratory problems (asthma), musculoskeletal diseases (arthritis) and some forms of cancer. The rise in overweight and obesity is a major public health concern, threatening progress in tackling cardiovascular diseases. A number of behavioural and environmental factors have contributed to the long-term rise in overweight and obesity rates in OECD countries, including the widespread availability of energy dense foods and more time spent being physically inactive. These factors have created obesogenic environments, putting people, and especially those socially vulnerable, more at risk of obesity.

Overview Based on the latest available surveys, more than half (53.8%) of the adult population in OECD countries report that they are overweight or obese. In countries where height and weight were measured (as opposed to self-reported), this proportion is even greater, at 57.5%. The prevalence of overweight and obesity among adults exceeds 50% in no less than 22 of 34 OECD countries. In contrast, overweight and obesity rates are much lower in Japan and Korea and in some European countries (France and Switzerland), although even in these countries rates have been increasing. The prevalence of obesity, which presents even greater health risks than overweight, varies about six fold across OECD countries, from a low of less than 5% in Japan and Korea, to over 32% in Mexico and the United States. Across OECD countries, 19% of the adult population is obese. Obesity rates in men and women are similar in most countries. However, in Chile, Mexico and Turkey, as well as Russia and South Africa, a greater proportion of women are obese, while the reverse is true in Slovenia.

Definition Overweight and obesity are defined as excessive weight presenting health risks because of the high proportion of body fat. The most frequently used measure is based on the body mass index (BMI), which is a single number that evaluates an individual’s weight in relation to height (weight/height2, with weight in kilograms and height in metres). Based on the WHO classification, adults with a BMI from 25 to 30 are defined as overweight, and those with a BMI of 30 or over as obese.

Comparability The BMI classification may not be suitable for all ethnic groups, who may have equivalent levels of risk at lower or higher BMI. The thresholds for adults are also not suitable to measure overweight and obesity among children. For half of the countries, overweight and obesity rates are self-reported through estimates of height and weight from population-based health interview surveys. However, the other half of OECD countries derives their estimates from health examinations. These differences limit data comparability. Estimates from health examinations are generally higher, and more reliable than estimates from health interviews. The OECD average is based on both types of estimates (self-reported and measured) and, thus, may be underestimated.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information

The prevalence of obesity has increased over the past decade in all OECD countries. In 2013, at least one in five adults was obese in twelve OECD countries, compared to one in eight a decade ago. Since 2000, obesity rates have increased by a third or more in 14 countries. The rapid rise occurred regardless of where levels stood a decade ago. Obesity increased by around 45% in both Denmark and Australia, even though the current rate in Denmark is less than half that of Australia.

Analytical publications

The rise in obesity has affected all population groups, regardless of sex, age, race, income or education level, but to varying degrees. Evidence from Canada, the United Kingdom, France, Italy, Mexico, Spain, Switzerland and the United States shows that obesity tends to be more common in lower educated groups, especially in women.

Websites

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• Devaux, M. et al. (2011), “Exploring the Relationship between Education and Obesity”, OECD Journal: Economic Studies, Issue No. 1, OECD Publishing. • OECD (2010), Obesity and the Economics of Prevention: Fit not Fat, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing. • Health at a Glance (supplementary material), www.oecd.org/health/healthataglance. • Obesity Update, www.oecd.org/health/obesity-update.htm. • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. • The Economics of Prevention, www.oecd.org/health/ prevention. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RISK FACTORS OVERWEIGHT AND OBESITY

Obesity rates among the adult population Percentage of population aged 15 and over, 2013 or latest available year Self reported data

Measured data

40

30

20

10

0

1 2 http://dx.doi.org/10.1787/888933335299

Increasing obesity rates among the adult population Percentage of population aged 15 and over, 2000-13 or latest available period 2013 or latest available year

2000

40

35

30

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933335819

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HEALTH • RESOURCES

DOCTORS Resources

Doctors play a central role in health systems. There are concerns in many OECD countries about current or future shortages of doctors, in particular of general practitioners and doctors practising in rural regions or deprived urban areas. Projecting the future supply and demand of doctors is difficult because of high levels of uncertainties regarding their retirement patterns, migration patterns on the supply side, and changing health needs of ageing populations and health spending growth on the demand side.

Definition Practising physicians are defined as the number of doctors providing care for patients. Generalists include doctors assuming responsibility for the provision of continuing care to individuals and families, as well as other generalist/ non-specialist practitioners. Specialists include

Overview Between 2000 and 2014, the number of physicians has grown in most OECD countries, both in absolute number and on a per capita basis. The growth rate was particularly rapid in countries which started with lower levels in 2000 (Turkey, Korea and Mexico), but also in countries which already had a large number such as Greece and Austria. In Greece, the number of doctors per capita increased strongly between 2000 and 2008, but has stabilised since then. The number of doctors has also increased strongly in Australia and the United Kingdom, driven mainly by a strong rise in the number of graduates from domestic medical education programmes. On the other hand, the number of physicians per capita remained fairly stable since 2000 in Estonia, France, Israel and the Slovak Republic. In nearly all countries, the balance between generalist and specialist doctors has changed over the past few decades, with the number of specialists increasing much more rapidly. As a result, there were more than two specialists for every generalist in 2013, on average across OECD countries. In many countries, specialists earn more and have seen their earnings grow faster than generalists. This creates a financial incentive for doctors to specialise, although other factors such as working conditions and professional prestige also influence choices. Nearly all OECD countries exercise some control over medical school intakes, often by limiting the number of training places, for example in the form of a numerus clausus. Ireland and Denmark had the highest number of medical graduates per 100 000 population in 2014. Graduation rates were the lowest in Israel, Japan and Turkey. In most OECD countries, the number of new medical graduates has gone up since 2000.

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paediatricians, obstetricians/gynaecologists, psychiatrists, medical specialists and surgical specialists. Medical doctors not further defined include interns/residents if they are not reported in the field in which they are training, and doctors not elsewhere classified. The numbers are based on head counts.

Comparability In several countries (Canada, France, Greece, Iceland, the Netherlands, the Slovak Republic and Turkey), the data include not only physicians providing direct care to patients, but also those working in the health sector as managers, educators, researchers, etc. This can add another 5-10% of doctors. Data for Chile and Portugal refer to all physicians licensed to practice (resulting in a large overestimation of the number of practising doctors in Portugal, of around 30%). Data for Spain include dentists up to 2010, while data for Belgium include stomatologists. Data for India are likely over-estimated as they are based on medical registers that are not regularly updated to account for migration, death, retirement, and people registered in multiple states. Not all countries are able to report all their physicians in the two broad categories of specialists and generalists because of missing information.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • Ono, T., G. Lafortune and M. Schoenstein (2013), “Health Workforce Planning in OECD Countries: A Review of 26 Projection Models from 18 Countries” OECD Health Working Papers, No. 62, OECD Publishing. • OECD (2008), “The Looming Crisis in the Health Workforce: How can OECD Countries Respond?”, OECD Health Policy Studies, OECD Publishing.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RESOURCES DOCTORS

Practising physicians Per 1 000 inhabitants 2014 or latest available year

2000 or first available year

7 6 5 4 3 2 1 0

1 2 http://dx.doi.org/10.1787/888933334872

Categories of physicians As a percentage of total physicians, 2013 or latest available year Generalists

Specialists

Medical doctors not further defined

100 90 80 70 60 50 40 30 20 10 0

1 2 http://dx.doi.org/10.1787/888933335765

Medical graduates Per 100 000 inhabitants 2014 or latest available year

2000 or first available year

25

20

15

10

5

0

1 2 http://dx.doi.org/10.1787/888933335914

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HEALTH • RESOURCES

NURSES Nurses are usually the most numerous health profession, outnumbering physicians on average across OECD countries by almost three to one. However, there are concerns in many countries about shortages of nurses, and these concerns may well intensify in the future as the demand for nurses continues to increase and the ageing of the “baby-boom” generation precipitates a wave of retirements among nurses. These concerns have prompted actions in many countries to increase the training of new nurses combined with efforts to increase the retention of nurses in the profession.

Definition The number of nurses includes all those employed in public and private settings providing services to patients (“practising”), including the self-employed. In those countries where there are different levels of nurses, the data include both “professional nurses” who have a higher level of education and perform higher level tasks and “associate professional nurses” who have a lower level of education but are nonetheless recognised and registered as nurses. Midwives and nursing aids who are not recognised as nurses are normally excluded.

Comparability

Overview On average across OECD countries, there were around 9 nurses per 1 000 population in 2014. The number of nurses per capita was highest in Switzerland, Norway, Denmark, Iceland and Finland, with more than 14 nurses per 1 000 population. The number of nurses per capita in OECD countries was lowest in Turkey, Mexico and Greece. The number of nurses per capita was also low compared with the OECD average in the emerging economies, such as Indonesia, India, South Africa, and Brazil where there were fewer than 1.5 nurses per 1 000 population in 2013, although numbers have been growing quite rapidly in Brazil in recent years. The number of nurses per capita increased in almost all OECD countries over the past decade. This was the case in countries that already had a high density of nurses in 2000 such as Switzerland, Norway and Denmark, but also in Korea, Portugal and France which used to have a relatively low density of nurses. The number of nurses per capita declined between 2000 and 2014 only in Israel and the Slovak Republic. In 2013, there were about three nurses per doctor on average across OECD countries, with about half of the countries reporting between two to four nurses per doctor. The nurse-to-doctor ratio was highest in Finland, Japan, Ireland and Denmark (with at least 4.5 nurses per doctor). It was lowest in Greece (with only about half a nurse per doctor) and in Turkey and Mexico (with only about one nurse per doctor). There were 47 newly graduated nurses per 100 000 population on average across OECD countries in 2014. The number was highest in Korea, Denmark and Switzerland, and lowest in Mexico, Luxembourg, the Czech Republic, Spain, Turkey, Israel and Italy, with less than half the OECD average. Nurse graduation rates have traditionally been low in Mexico, Turkey, Israel and Spain, four countries which report a relatively low number of nurses per capita. In Luxembourg, nurse graduation rates are also low, but many nurses are foreign-trained.

216

In several countries (France, Greece, Iceland, Ireland, Italy, the Netherlands, Portugal, the Slovak Republic, Turkey and the United States), the data include not only nurses providing direct care to patients, but also those working in the health sector as managers, educators, researchers, etc. Data for Chile refer to all nurses who are licensed to practice (less than one-third are professional nurses with a university degree). About half of OECD countries include midwives because they are considered as specialist nurses. Austria reports only nurses employed in hospitals, resulting in an under-estimation.

Sources • OECD (2015), OECD Health Statistics (Database).

Further information Analytical publications • Buchan, J. and S. Black (2011), “The Impact of Pay Increases on Nurses’ Labour Market: A Review of Evidence from Four OECD Countries”, OECD Health Working Papers, No. 57. • Delamaire, M. and G. Lafortune (2010), “Nurses in Advanced Roles: A Description and Evaluation of Experiences in 12 Developed Countries”, OECD Health Working Papers, No. 54.

Statistical publications • OECD (2015), Health at a Glance, OECD Publishing. • OECD (2014), Health at a Glance: Asia/Pacific, OECD Publishing. • OECD (2014), Health at a Glance: Europe, OECD Publishing.

Websites • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RESOURCES NURSES

Practising nurses Per 1 000 inhabitants 2014 or latest available year

2000 or first available year

18

15

12

9

6

3

0

1 2 http://dx.doi.org/10.1787/888933335283

Ratio of nurses to physicians 2013 or latest available year 6

5

4

3

2

1

0

1 2 http://dx.doi.org/10.1787/888933335801

Nursing graduates Per 100 000 inhabitants 2014 or latest available year

2000 or first available year 104

100

80

60

40

20

0

1 2 http://dx.doi.org/10.1787/888933335941

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217

HEALTH • RESOURCES

HEALTH EXPENDITURE In most OECD countries, spending on health is a large and growing share of both public and private expenditure. Health spending as a share of GDP had been rising over recent decades but has stagnated or fallen in many countries in the last couple of years as a consequence of the global economic downturn. The financial resources devoted to health care vary widely across countries, reflecting the relative priority assigned to health as well as the diverse financing and organisational structures of the health system in each country. For a more comprehensive assessment of health spending, the health spending to GDP ratio should be considered together with per capita health spending. Countries having a relatively high health spending to GDP ratio might have relatively low health expenditure per capita, while the converse also holds.

Definition Expenditure on health measures the final consumption of health goods and services (i.e. current health expenditure). This includes spending by both public and private sources (including households) on medical services and goods, public health and prevention programmes and administration, but excludes spending on capital formation (investments). Medical services can be provided

in inpatient and outpatient settings or in some cases in day care facilities or at the home of the patient.

Comparability OECD countries are at varying stages of reporting health expenditure data according to the definitions proposed in the 2011 manual A System of Health Accounts (SHA). While the comparability of health expenditure data has improved recently, some limitations do remain, in particular on the measurement of long-term care expenditure and administrative services. The data generally refer to current health expenditure and therefore exclude capital formation (investments). However, data for Brazil, China, India, Indonesia, Russia and South Africa include investments. Public and private expenditure for the United Kingdom include investments, whereas total expenditure does not. The Netherlands report compulsory co-payments by patients to health insurers under social security rather than under households’ out-of-pocket payments, resulting in an overestimation of the public spending share and an underestimation of the private spending share. In Luxembourg, health expenditure is for the insured population rather than the resident population. For Australia, Ireland and Luxembourg 2013 data refer to 2012.

Overview Trends in the health spending-to-GDP ratio are the result of the combined effect of changes in GDP and health expenditure. The 2000s were characterised by a period of health spending growth above that of the overall economy so that health expenditure as a share of GDP rose sharply in many OECD countries. As a result, the average share of GDP allocated to health climbed from 7.2% in 2000 to 8.3% in 2008. The health spending-to-GDP ratio jumped sharply in 2009 to reach 9.0% on average as overall economic conditions rapidly deteriorated but health spending continued to grow or was maintained in many countries. In the context of reducing public deficits, the subsequent reductions in (public) spending on health have resulted in the share of GDP first falling and since stabilising as health expenditure growth has become aligned to economic growth in many OECD countries. In 2013, health spending accounted for 8.9% of GDP on average across OECD countries. There remain large variations in how much OECD countries spend on health as a share of GDP. In 2013, the share of GDP allocated to health was the largest by far in the United States (16.4%), followed by the Netherlands and Switzerland (both 11.1%). Turkey, Estonia and Mexico spent 6% or less of their GDP on health.

218

Sources • OECD (2015), OECD Health Statistics (Database). • For non-OECD member countries: World Health Organization (WHO), Global Health Observatory Data Repository (Database).

Further information Analytical publications • OECD (2010), Value for Money in Health Spending, OECD Health Policy Studies, OECD Publishing.

Statistical publications • OECD (2015), Government at a Glance, OECD Publishing. • OECD (2015), Health at a Glance, OECD Publishing.

Methodological publications • OECD, Eurostat and World Health Organization (2011), A System of Health Accounts, OECD Publishing.

Websites • OECD Health Statistics (supplementary material), www.oecd.org/els/health-systems/health-statistics.htm. OECD FACTBOOK 2015-2016 © OECD 2016

HEALTH • RESOURCES HEALTH EXPENDITURE

Public and private expenditure on health As a percentage of GDP Public expenditure

Australia Austria Belgium Canada Chile Czech Republic Denmark Estonia Finland France Germany Greece Hungary Iceland Ireland Israel Italy Japan Korea Luxembourg Mexico Netherlands New Zealand Norway Poland Portugal Slovak Republic Slovenia Spain Sweden Switzerland Turkey United Kingdom United States EU 28 OECD Brazil China India Indonesia Russian Federation South Africa

2000

2005

2010

5.2 7.0 5.9 5.8 3.3 5.1 6.7 4.0 4.8 7.5 7.7 4.4 4.7 7.3 4.2 4.3 5.5 5.9 2.0 4.8 2.2 4.7 5.8 6.3 3.6 5.9 4.7 6.0 4.9 6.3 5.2 2.9 5.3 5.5 .. 5.2 2.8 1.8 1.2 0.6 3.3 3.4

5.5 7.2 6.9 6.4 2.4 5.6 7.6 3.8 5.7 8.0 7.8 5.6 5.6 7.4 5.2 4.3 6.5 6.6 2.8 6.0 2.5 6.7 6.6 6.9 4.0 6.8 5.0 5.9 5.5 6.8 6.1 3.5 6.4 6.6 .. 5.8 3.4 1.8 1.0 0.7 3.2 3.4

5.8 7.7 7.7 7.4 3.0 5.8 8.8 4.9 6.1 8.4 8.3 6.2 5.0 7.1 5.9 4.4 7.0 7.8 3.7 6.1 2.9 9.1 7.9 7.5 4.6 6.9 5.6 6.3 6.7 6.9 6.7 4.2 7.6 7.9 .. 6.4 4.1 2.7 1.2 1.0 3.7 4.0

Private expenditure 2013 or latest available year 5.9 7.7 8.0 7.2 3.4 6.0 8.8 4.6 6.5 8.6 8.4 6.0 4.8 7.1 5.5 4.4 6.8 8.5 3.8 5.5 3.2 9.7 7.6 7.6 4.5 6.1 5.6 6.2 6.3 9.2 7.3 4.0 7.3 7.9 .. 6.5 4.4 3.1 1.3 1.1 3.1 4.3

2000

2005

2010

2.4 2.3 2.0 2.5 3.1 0.6 1.4 1.2 1.9 2.0 2.1 2.8 2.1 1.7 1.4 2.4 2.1 1.4 2.0 1.1 2.7 2.4 1.6 1.4 1.6 2.4 0.6 2.1 2.0 1.1 4.2 1.8 1.4 7.0 .. 2.1 4.2 2.9 3.2 1.1 2.2 4.9

2.5 2.4 2.1 2.7 4.1 0.8 1.5 1.1 2.0 2.2 2.5 3.4 2.5 1.7 1.7 2.7 1.9 1.5 2.3 1.2 3.4 2.8 1.7 1.4 1.8 2.7 1.6 2.1 2.2 1.5 4.2 1.7 1.5 8.0 .. 2.3 4.8 2.9 3.3 1.8 2.0 5.4

2.7 2.4 2.2 3.2 3.7 1.2 1.6 1.3 2.1 2.4 2.7 3.0 2.7 1.7 2.6 2.5 1.9 1.7 2.7 1.1 3.3 1.4 1.9 1.4 1.8 2.9 2.2 2.3 2.3 1.5 3.7 1.2 1.5 8.5 .. 2.4 4.6 2.3 2.7 1.7 3.2 4.6

Total 2013 or latest available year 2.8 2.4 2.3 3.0 3.9 1.1 1.6 1.3 2.2 2.3 2.6 3.1 2.6 1.7 2.6 2.9 2.0 1.7 3.0 1.2 3.0 1.4 1.9 1.3 1.9 3.1 2.0 2.5 2.5 1.7 3.7 1.1 1.5 8.5 .. 2.4 4.7 2.5 2.7 1.8 3.4 4.6

2000

2005

2010

2013 or latest available year

7.6 9.2 8.0 8.3 6.4 5.7 8.1 5.2 6.7 9.5 9.8 7.2 6.8 9.0 5.6 6.8 7.6 7.4 4.0 5.9 4.9 7.0 7.5 7.7 5.3 8.3 5.3 8.1 6.8 7.4 9.3 4.7 6.3 12.5 .. 7.2 7.0 4.6 4.3 1.8 5.4 8.3

8.0 9.6 9.0 9.1 6.6 6.4 9.1 5.0 7.7 10.2 10.3 9.0 8.1 9.2 6.9 7.2 8.4 8.1 5.0 7.2 5.9 9.5 8.2 8.3 5.8 9.4 6.6 8.0 7.7 8.3 10.3 5.1 7.4 14.6 .. 8.1 8.3 4.7 4.3 2.5 5.2 8.8

8.5 10.1 9.9 10.6 6.7 6.9 10.4 6.1 8.2 10.8 11.0 9.2 7.7 8.8 8.5 7.0 8.9 9.5 6.5 7.2 6.2 10.4 9.7 8.9 6.5 9.8 7.8 8.6 9.0 8.5 10.5 5.3 8.6 16.4 .. 8.8 8.7 5.0 3.8 2.7 6.9 8.7

8.8 10.1 10.2 10.2 7.3 7.1 10.4 6.0 8.6 10.9 11.0 9.2 7.4 8.7 8.1 7.5 8.8 10.2 6.9 6.6 6.2 11.1 9.5 8.9 6.4 9.1 7.6 8.7 8.8 11.0 11.1 5.1 8.5 16.4 .. 8.9 9.1 5.6 4.0 2.9 6.5 8.9

1 2 http://dx.doi.org/10.1787/888933336500

Public and private expenditure on health As a percentage of GDP, 2013 Public expenditure

Private expenditure

18 16 14 12 10 8 6 4 2 0

1 2 http://dx.doi.org/10.1787/888933335371

OECD FACTBOOK 2015-2016 © OECD 2016

219

Analytical index

Defence expenditure, see: Law, order and defence expenditure

184

Deficit, government, see: Government debt

182

Development assistance, see: Official development assistance

194

Doctors

214

Dwelling investment, see: Investment rates

A A Accidents, see: Road fatalities

E E 116

Account balances, see: Current account balance 82 Agriculture, see: Real value added by activity

36

42

Air quality, see: Regional quality of air

150

Alcohol consumption

210

Annual growth, see:

Education, see: Attainment

170

Early childhood education and care

164

Expenditure, per student

174

Expenditure, private tertiary

176

68

Information and communication technology (ICT) skills 162

Exports of services

70

Investment, higher education

176

Imports of goods

68

Student assessment

160

Imports of services

70

Exports of goods

B B

Study abroad

168

Tertiary Education

170

Youth inactivity

166

Elderly dependency, see: Balance of payments

82

Birth rates, see: Fertility rates Infant mortality rates Brain drain, see: Migration, unemployment Business services, see: Real value added by activity

204 26 42

Carbon dioxide (CO2) emission, see: Emissions of carbon dioxide

144

Greenhouse gas emissions

148

Metropolitan areas

150

Sulphur and nitrogen emissions

146 204

Competitiveness, see: Real effective exchange rates

94

Consumer price index

86

Crude oil, see: Import prices

110

Spot prices

110

Current account balance

182

220

102

Emissions of carbon dioxide (CO2)

144

Employees, in manufacturing Employment, see: Labour Growth, regions

128

Part-time

124

Rates, age

122

Rates, foreign-born

124

Rates, gender

120

Rates, regions

128

Self-employment

126

Energy , see: Electricity generation

102

Intensity

100

Nuclear

104

Oil prices

110

Oil production

108

Renewable

106

Supply, per capita

100

Supply, total

98

Entrepreneurship, see:

Exchange rates, see: 182 60

44 120

126

Small and medium-sized enterprises (SME)

Debt, see: Household debt

190

Electricity

Self-employment

D D Government debt

18

Social expenditure 14

C C

Child mortality, see: Infant mortality

Population rate, regions

44 92

Rates of conversion

92

Real effe exchange rates

94

OECD FACTBOOK 2015-2016 © OECD 2016

Goods, trade, see: Merchandise

Expenditure, see: Defence

184

Government debt

Education, private, tertiary

176

Government expenditures , see:

68 182

Government, across levels of government

184

General government expenditures

186

Health

218

Revenues and deficits

180

Pensions

192

Public, structure of production costs

188

Government services, see: Real value added in services

Research and development (R&D)

152

Green areas, see: Environmental sustainability 150

Social

190

Tertiary education

176

Greenhouse gases, emission, see: Emissions of carbon dioxide

Expenditures, government

180

Exports, see: Goods

66

Gross and net national income per capita Gross domestic expenditure on R&D Gross domestic product (GDP), see:

Relative annual growth of imports of services 70 Services

70

Trade balance

68

F F Fertility rates Financial assets, see: Household financial assets Financial liabilities, see: Government debt

14 58 182

42

148 48 152 30

Growth

32

Metropolitan area

34

per capita

30

per hour worked

38

Real GDP growth

32

Real value added by activity

42

Regional

34

Gross fixed capital formation, see: Investment rates

36

Foreign aid, see: Official development assistance 194

H H

Foreign direct investment (FDI), see: FDI flows

76

FDI regulatory restrictiveness index

80

FDI stocks

78

Foreign population, see: Migration, trends

22

Foreign value added, see: Trade in value added

72

Health, see:

Foreign-born, see: Migration, trends

22

Unemployment rate

26

Fuel, see: CO2 emissions

144

Alcohol

210

Expenditure

218

Nurses

216

Obesity

212

Resources

214

Risks

208

Smoking

208

Status

202

Higher education, see: Tertiary Education

G G

Assets, non-financial

General government, see: Expenditures

186

Expenditures and revenues per capita

186

Gross financial liabilities

182

Net lending

180

Production costs

188

Revenues

180

Gini index, see: Regional unemployment rates Income inequality Global value chains, see: Trade in value added: role of intermediates and services

136 54 74

GNI, see: Gross and net national income per capita 48 Goods and services, see: Trade balance Goods transport

OECD FACTBOOK 2015-2016 © OECD 2016

170

Households, see:

68 112

I

62

Disposable income

50

Financial assets

58

Savings

52

Wealth

58

I

Immigrant and foreign population

20

Imports, see: Goods

68

Services

70

Share of international trade in GDP

66

Trade balance

68

221

N N

Income, see: Gross and net national income per capita

48

Household income

50

Inequality

54

Poverty

56

Industry , see: Real value added by activity Inequality, see: Income inequality Infant mortality

42

Interest rates

90

Intermediates, see: Trade in value added: Role of intermediates and services

74

Investment rates

160 36

J

104

Nurses

216

O O Obesity

212

Official development assistance (ODA)

194

Oil, see: Prices

110

Production

108 212

76

Foreign direct investment stocks

78

Restrictiveness

80

J

Jobs, see: Employment

Nuclear electricity generation

Overweight and obesity, see:

Investment, foreign, see: Foreign direct investment flows

48

Neither in education, employment or training (NEET), see: Youth inactivity 166

54 204

Information and communication technology (ICT), see: Student usage 162

International student assessment, see: PISA

National income per capita (NNI)

120

L L

P P Part-time employment, see: Employment, part-time

124

Passenger transport

114

Patents, see: Patents

156

Pensions, expenditure

192

Physicians, see: Doctors

214

PISA, see: International student assessment

160

Pollution, see: Labour, see: Hours worked Productivity levels

130 38

Law, order and defence expenditure

184

Life expectancy

202

Literacy, see: International student assessment 160

MM Machinery investment, see: Investment rates

36

Manufacturing, see:

144

Regional air quality

150

Sulphur and nitrogen emissions

146

Population, see:

12

By regions

16

Distribution, regions

16

Elderly population

18

Growth rates

12

Immigrant and foreign population

20

Levels

22

Working age

Employees in manufacturing

44

PPI: domestic manufacturing

88

Mental health

206

Migration, see:

22

Employment

24

Immigrant and foreign population, trends

20

Unemployment

26

Military expenditure, see: Defence expenditure 184

222

Emissions of carbon dioxide

Mortality rates, see: Infant mortality

204

Municipal waste

142

120

World

12

Poverty, see: Income poverty

56

Price index, see: Consumer Price Indices (CPI)

86

Producer Price Indices

88

Prices, see: Producer Price Indices

88

Producer price indices (PPI), see: Purchasing power parities

92

Rates of conversion

92

Production costs

88

Purchasing power parities

92

OECD FACTBOOK 2015-2016 © OECD 2016

R R

Tobacco use, see: Smoking

208

Total primary energy supply (TPES), see: Rates of conversion

92

Real effective exchange rates

94

Real household disposable income

50

Real value added in services

42

Refinery production, see: Share of refinery production by product Regional, GDP, see: Metropolitan areas

108 34

Renewable energy

106

Research and development (R&D), see:

152

Expenditure

152

Patents

156

Researchers

154

Researchers Road fatalities

154 116

172 182

Household saving

52

National income per capita

48

Self-employment, see: Employment

100

per unit of GDP

100

Trade, see: Balance

70

Goods, international

68

In value added

72

Role of intermediates and services

74

Services, international

70

Transport, see: Goods transport Passenger transport Triadic patent families, see: Patents

112 114 156

Unemployment, see: Foreign- and native-born populations

Savings, see: Government debt

98

per capita

U U

S S Salaries, see: Teachers

by region

126

20

Long-term

134

Rates

132

Regional

136

Youth inactivity

166

Services, see: Imports of services

70

Real value added in services

40

Small and medium-sized enterprises (SME)

44

Smoking

208

Social expenditure

190

Students, international & foreign, see: Study abroad

168

Study abroad

168

Suicides

206

T T Tax revenue

198

Taxes, see: Goods and services

198

Income and profits

196

Teachers

172

Tertiary education, see:

Value added, see: By activity

40

Real value added by activity

42

Role of intermediates and services

74

Trade

72

WW Waste generation, see: Municipal waste

142

Water consumption

140

Wealth, household

58

Well-being and living standards, see: Household disposable income

50

Y Y Youth unemployment, see: Youth inactivity

Expenditure

174

Expenditure, private tertiary

176

Tertiary attainment

170

OECD FACTBOOK 2015-2016 © OECD 2016

V V

166

223

ORGANISATION FOR ECONOMIC CO-OPERATION AND DEVELOPMENT The OECD is a unique forum where governments work together to address the economic, social and environmental challenges of globalisation. The OECD is also at the forefront of efforts to understand and to help governments respond to new developments and concerns, such as corporate governance, the information economy and the challenges of an ageing population. The Organisation provides a setting where governments can compare policy experiences, seek answers to common problems, identify good practice and work to co-ordinate domestic and international policies. The OECD member countries are: Australia, Austria, Belgium, Canada, Chile, the Czech Republic, Denmark, Estonia, Finland, France, Germany, Greece, Hungary, Iceland, Ireland, Israel, Italy, Japan, Korea, Luxembourg, Mexico, the Netherlands, New Zealand, Norway, Poland, Portugal, the Slovak Republic, Slovenia, Spain, Sweden, Switzerland, Turkey, the United Kingdom and the United States. The European Union takes part in the work of the OECD. OECD Publishing disseminates widely the results of the Organisation’s statistics gathering and research on economic, social and environmental issues, as well as the conventions, guidelines and standards agreed by its members.

OECD PUBLISHING, 2, rue André-Pascal, 75775 PARIS CEDEX 16 (30 2015 04 1 P) ISBN 978-92-64-23256-3 – 2016

OECD Factbook 2015-2016 ECONOMIC, ENVIRONMENTAL AND SOCIAL STATISTICS OECD Factbook 2015-2016 is a comprehensive and dynamic statistical publication from the OECD. Close to 100 indicators cover a wide range of areas: economy, education, energy, transportation, environment, development, health, industry, information and communications, population, employment and labour, trade and investment, taxation, public expenditure and R&D. This year, the OECD Factbook includes new indicators on a number of regional indicators including GDP by metropolitan area. Data are provided for all OECD countries, including the OECD aggregate, euro area, European Union, and where data are available, Brazil, China, India, Indonesia, Russia, and South Africa. For each indicator, there is a two-page spread. A text page includes a short introduction followed by a detailed definition of the indicator, comments on comparability of the data, an assessment of long-term trends related to the indicator, and a list of references for further information on the indicator. The second page contains a table and a graph providing - at a glance - the key message conveyed by the data. Each indicator includes StatLinks which allow readers to download the corresponding data. OECD Factbook 2015-2016 is a key reference tool for users working on economic and policy issues. Contents Population and migration Production Household income and wealth Globalisation Prices Energy and transportation Labour Environment and science Education Government Health

Consult this publication on line at http://dx.doi.org/10.1787/factbook-2015-en. This work is published on the OECD iLibrary, which gathers all OECD books, periodicals and statistical databases. Visit www.oecd-ilibrary.org for more information.

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